US20090294673A1 - High-volume on-line spectroscopic composition testing of manufactured pharmaceutical dosage units - Google Patents

High-volume on-line spectroscopic composition testing of manufactured pharmaceutical dosage units Download PDF

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US20090294673A1
US20090294673A1 US12/218,504 US21850408A US2009294673A1 US 20090294673 A1 US20090294673 A1 US 20090294673A1 US 21850408 A US21850408 A US 21850408A US 2009294673 A1 US2009294673 A1 US 2009294673A1
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spectral
dosage units
pharmaceutical dosage
image sensor
processor
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E. Neil Lewis
David J. Strachan
Linda H. Kidder
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/17Systems in which incident light is modified in accordance with the properties of the material investigated
    • G01N21/25Colour; Spectral properties, i.e. comparison of effect of material on the light at two or more different wavelengths or wavelength bands
    • G01N21/31Investigating relative effect of material at wavelengths characteristic of specific elements or molecules, e.g. atomic absorption spectrometry
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/17Systems in which incident light is modified in accordance with the properties of the material investigated
    • G01N21/25Colour; Spectral properties, i.e. comparison of effect of material on the light at two or more different wavelengths or wavelength bands
    • G01N21/251Colorimeters; Construction thereof
    • G01N21/253Colorimeters; Construction thereof for batch operation, i.e. multisample apparatus

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  • This invention pertains to quality control systems and methods that detect process defects in large-scale manufacturing processes, such as the manufacture of pharmaceutical dosage units, using continuous spectral imaging techniques.
  • Defects in pharmaceutical products can be highly dangerous, or even fatal. And even if such defects are relatively minor, such as non-uniformly sized capsules, they can result in a significant loss of goodwill by the manufacturer. It is therefore of the utmost importance to avoid such defects.
  • Off-line methods include-the testing of samples of reagents and end-products using various analytical methods.
  • On-line methods attempt to monitor the process of manufacturing the product to detect defects as they occur.
  • a number of on-line screening approaches currently exist.
  • One approach includes adding coloring agents to bulk ingredients and optically checking the shape, integrity, and color of the final product.
  • Systems employing this approach can take a series of video images of dosage units and use image processing methods to assess the shape and color of the dosage units.
  • Other systems employ groups of discrete optical detectors to detect different colors and infrared detectors to detect the scattering caused by structural defects. These systems can be complicated to install and maintain, and cannot guarantee a defect-free product.
  • Systems according to the invention are advantageous in that they can continuously test the actual composition of each dosage unit within its packaging. Such systems can therefore screen for errors in coloring of ingredients, for contamination or breakdown that occurs independent of coloring, and for other types of errors that might not otherwise be detected. And because systems according to the invention can perform their composition measurements through the end-user package walls, they can detect contamination or damage that occurs during packaging.
  • composition analysis by comparing spectral information with libraries of known spectral signatures allows small concentrations of potentially dangerous contaminants, such as potent toxins, to be detected. Without being correlated to a specific spectral signature, such small concentrations might have little effect on prior art process monitoring methods, and might therefore be dismissed as within an error margin.
  • composition analysis by comparing spectral information with libraries of known spectral signatures may also allow for the detection of unexpected components. Comparing acquired spectral information with libraries of components may uncover contaminants not normally associated with the process. This may allow a manufacturer to avert hazards that arise out of unforseen circumstances, such as supplier errors or deliberate tampering.
  • composition analysis by comparing spectral information with libraries of known spectral signatures may further allow for the detection of subtle shifts in the process. Because relative quantities of ingredients can be directly measured, a change in the ratio of these ingredients can be detected. While such changes may not warrant rejection of the products, they may allow the process to be optimized and prevent the process from drifting out of its intending operating range.
  • Systems according to the invention may also be advantageous in that they can allow a process engineer to select optimal process variables to monitor.
  • systems according to the invention can apply the image processing resources to the spectral data that correlates best to known and predicted failure modes. And because the system acquires information about a large number of wavelengths simultaneously, a system operator can try a number of different approaches to achieve the best results.
  • FIG. 1 is a diagram of an embodiment of a pharmaceutical dosage unit manufacturing process control system according to the invention, including a perspective portion illustrating the relationship between the image sensor, the spectrally selective element, and the process stream;
  • FIG. 2 is a plan view diagram of an image sensor for use with the process control system of FIG. 1 ;
  • FIG. 3 is a plan view diagram illustrating output of the system of FIG. 1 ;
  • FIG. 4 is a flowchart illustrating the operation of the embodiment of FIG. 1 ;
  • FIG. 5 is a diagram of a second embodiment of a pharmaceutical dosage unit manufacturing process control system according to the invention, including a perspective portion illustrating the relationship between the image sensor, the spectrally selective element, and the process stream.
  • a pharmaceutical dosage unit manufacturing process control system features an image sensor 10 and a spectrally selective element 12 facing a web 16 that carries a series of parallel rows of pharmaceutical dosage units 18 , such as capsules, tablets, pellets, ampoules, or vials, in a process flow direction.
  • the web can carry a continuous stream of blister-packaged tablets from the output of a packaging machine.
  • the image sensor is a multi-element sensor that includes at least a series of adjacent sensing elements located generally along an axis that is perpendicular to the flow direction.
  • the spectrally selective element is a wavelength separating element, and is preferably a dispersive element, such as a diffraction grating or a prism-based monochromator.
  • the image sensor 10 is preferably a two-dimensional array sensor that includes a two-dimensional array of detector elements made up of a series of lines of elements (A 1 -An, B 1 -Bn, . . . N 1 -Nn) that are each located generally along an axis that is perpendicular to the flow direction.
  • the image sensor can include an array of integrated semiconductor elements, such as a Charge-Coupled Device (CCD) array, and is preferably sensitive to infrared radiation.
  • CCD Charge-Coupled Device
  • Uncooled Idium-Galium-Arsenide (InGaAs) arrays which are sensitive to near infrared wavelengths, are suitable image sensors, although sensitivity to longer wavelengths would be desirable.
  • the sensors should preferably have dimensions of at least 64 ⁇ 64 or even 256 ⁇ 256. Where such sensors are not square, they should-be oriented with their longer dimension in the direction of the process flow, as spectral information appears to be typically more important than spatial information given the nature of pharmaceutical mass-production equipment.
  • the system also includes an image acquisition interface 22 having an input port responsive to an output port of the image sensor 10 .
  • the image acquisition interface receives and/or formats image signals from the image sensor. It can include an off-the shelf frame buffer card with a 12-16 bit dynamic range, such as are available from Matrox Electronic Systems Ltd. of Montreal, Canada, and Dipix Technologies, of Ottawa, Canada.
  • a spectral processor 26 has an input responsive to the image acquisition interface 22 .
  • This spectral processor has a control output provided to a source control interface 20 , which can power and control an illumination source 14 .
  • the illumination source for near infrared measurements is preferably a Quartz-Tungsten-Halide lamp.
  • the spectral processor 26 is also operatively connected to a standard input/output (IO) interface 30 and to a local spectral library 24 .
  • the local spectral library includes locally-stored spectral signatures for known process components. These components can include ingredients, process products, or results of process defects or contamination.
  • the IO interface can also operatively connect the spectral processor to a remote spectral library 28 .
  • the spectral processor 26 is operatively connected to an image processor 32 as well.
  • the image processor can be an off-the-shelf programmable industrial image processor, that includes special-purpose image processing hardware and image evaluation routines that are operative to evaluate shapes and colors of manufactured objects in industrial environments. Such systems are available from, for example, Cognex, Inc.
  • the system is based on the so-called IBM-PC architecture.
  • the image acquisition interface 22 , IO interface 30 , and image processor 32 each occupy expansion slots on the system bus.
  • the spectral processor is implemented using special-purpose spectral processing routines loaded on the host processor, and the local spectral library is stored in local mass storage, such as disk storage.
  • other structures can be used to implement systems according to the invention, including various combinations of dedicated hardware and special-purpose software running on general-purpose hardware.
  • the various elements and steps described can be reorganized, divided, and combined in different ways without departing from the scope and spirit of the invention. For example, many of the separate operations described above can be performed simultaneously according to well-known pipelining and parallel processing principles.
  • the spectrally selective element 12 is sensitive to the radiation reflected off of a line across the process web 16 , and collimated by a first-stage optic, such as a lens (not shown).
  • the spectrally selective element separates the spectral components of the reflected radiation along the axis of the process flow.
  • the successive lines A 1 -An, B 1 -Bn, . . . N 1 -Nn of the image sensor are exposed to spectral components of the radiation that are of successively higher or lower wavelengths, depending on the relative orientation of the spectrally selective element and the image sensor.
  • a portion of the line image extends beyond the web to overlap with a stationary reference sample 19 located adjacent the web. This implementation can allow for the removal of transfer of calibration requirements between systems that collect pure component spectra for spectral comparison.
  • the image acquisition interface 22 acquires a data set representative of the radiation incident on the image sensor (i.e., a spectral line image—step 40 ).
  • This data set includes image values for each of the pixels along the imaged line on the process web at a number of different wavelengths. In the case of a 256 ⁇ 256 array, intensity values at 256 different wavelengths will be stored for each of 256 points on the imaged line.
  • the image acquisition interface transfers this data set to the spectral processor 26 .
  • the spectral processor 26 then evaluates the acquired spectral line image (step 42 ).
  • This evaluation can include a variety of univariate and multivariate spectral manipulations. These can include comparing received spectral information with spectral signatures stored in the library, comparing received spectral information attributable to manufactured dosage units with information attributable to the reference sample, or evaluating simplified test functions, such as looking for the absence of a particular wavelength or combination of wavelengths. Multivariate spectral manipulations are discussed in more detail in “Multivariate Image Analysis,” by Paul Geladi and Hans, Grahn, available from John Wiley, ISBN No. 0-471-93001-6, which is herein incorporated by reference.
  • the spectral processor 26 may detect known components (step 44 ) and/or unknown components (step 46 ). If an unknown component is detected, the system records a spectral signature entry for the new component type in the local spectral library 24 (step 48 ). The system can also attempt to identify the newly detected component in an extended or remote library 28 , such as by accessing it through a telephone line or computer network (step 50 ). The system then flags the detection of the new component to the system operator, and reports any retrieved candidate identities (step 52 ).
  • the system maps the different detected components into a color (such as grayscale) line image (step 54 ). As the system processes further spectral line images, it accumulates a two-dimensional colored image frame. When complete, this image can be transferred to the image processor (step 58 ), which evaluates the shape and color of the dosage units (step 60 ), issues rejection signals for rejected dosage units, and compiles operation logs.
  • a color line image such as grayscale
  • the color image will resemble the process web, although it may be stretched or squeezed in the direction of the process flow, depending on the acquisition rate.
  • the image can include a color that represents the composition of the web 16 . It will can also include colors that represent known good components 18 A, colors that represent known defect components 18 B, and colors that represent unknown components 18 C.
  • the mapping can also take the form of a spectral shift, in which some or all of the acquired spectral components are shifted in a similar manner, preserving the relationship between wavelengths. Note that because the image maps components to colors, it provides information about spatial distribution of the pharmaceutical composition in addition to identifying its components.
  • While the system can operate in real-time to detect defective products, its results can also be analyzed further off-line. For example, some or all of the spectral data sets, or running averages derived from these data sets can be stored and periodically compared with extensive off-line databases of spectral signatures to detect possible new contaminants. Relative spectral intensities arising from relative amounts of reagents or ingredients can also be computed to determine if the process is optimally adjusted.
  • the system presented above is self-scanning. Although it can be synchronized with the process by a sensor, such synchronization is not required. The system can therefore be easily retrofit to existing installations and does not require any moving parts.
  • the acquisition method employed by the process control system can also be computationally efficient. Since data is acquired and spectrally processed on a line-by-line basis, the spectral processor does not have to store large amounts of intermediate results. Once a line has been mapped to a colored line image, all of the acquired data and intermediate results can be discarded, and a new line processed. This can allow the system to operate in real time with relatively simple computer components, keeping the overall system cost low.
  • a second embodiment of a pharmaceutical dosage unit manufacturing process control system includes a variable-bandpass filter 12 a between the two-dimensional array sensor and the process stream.
  • This filter has a narrow pass-band with a center wavelength that varies along the process direction.
  • the leading edge A of the filter passes shorter wavelengths, and as the distance from the leading edge along the process flow direction increases, the filter passes successively longer wavelengths.
  • the filter passes a narrow range of the longest wavelengths.
  • the orientation of the filter can also be reversed, so that the pass-band center wavelength decreases along the process flow direction.
  • the filter has been illustrated as a series of strips located perpendicular to the process flow direction, it can be manufactured in practice by continuously varying the dielectric thickness in an interference filter.
  • the filter should have a range of pass-bands that matches the range of the camera. Suitable filters are available, for example, from Optical Coatings Laboratory, Inc. of Santa Rosa, Calif.
  • acquisition interface 22 acquires data representing a series of variably-filtered, two-dimensional images. These two-dimensional images each include image values for the pixels in a series of adjacent lines perpendicular to the process web. Because of the action of the variable-bandpass filter, the detected line images that make up each two-dimensional image will have a spectral content that varies along the process direction.
  • the variably filtered images are combined as they are acquired in order to obtain full-range spectral images.
  • each successive line (N 1 . . . A 1 ) of elements in the array sensor 10 will sense radiation that has been filtered through a corresponding line (N . . . A) of the filter.
  • These individual line images can be assembled to create a full-spectrum line image. The assembly can take place by itself, or in combination with other operations, such as digital filtering operations. This embodiment is particularly advantageous because the variable-bandpass filter is relatively inexpensive and robust.
  • Another approach involves the use of an optical system that simultaneously projects a number of spectrally-discrete versions of the same two-dimensional image onto the array sensor 10 .
  • Such systems are described in PCT application No. PCT/US98/14218 published under No. WO09902950, which are herein incorporated by reference.
  • the use of these systems is advantageous in that they allow high data throughputs for a given web speed, without adding moving parts. Systems of this type are available from Optical Insights, Inc of Arlington, Ariz.
  • a further embodiment employs multi-source arrays to provide successive illumination at different wavelengths and thereby obtain spectral information from the process.
  • multi-source arrays are described in a copending provisional application entitled “Multi-Source Arrays,” filed on the same day as this application, and herein incorporated by reference.

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Abstract

Disclosed are pharmaceutical dosage unit manufacturing process control apparatus and methods. These can include acquiring a plurality of multi-pixel images of a flow of pharmaceutical dosage units at different wavelengths along an axis that is perpendicular to a direction of the flow of pharmaceutical dosage units, processing the images acquired in the step of acquiring, and providing an indication about the flow of pharmaceutical dosage units based on the step of processing.

Description

    CROSS-REFERENCE TO RELATED APPLICATION
  • This patent application is a continuation of application Ser. No. 10/776,029 filed on Feb. 10, 2004, now U.S. Pat. No. 7,399,968 issued on Jul. 15, 2008, which is a continuation of application Ser. No. 09/507,293 filed on Feb. 18, 2000, now U.S. Pat. No. 6,690,464 issued on Feb. 10, 2004, which claims the benefit under 35 U.S.C. § 119 (e) of U.S. provisional application No. 60/143,801 filed on Jul. 14, 1999 and of U.S. provisional application No. 60/120,859 filed on Feb. 19, 1999, which are all herein incorporated by reference.
  • FIELD OF THE INVENTION
  • This invention pertains to quality control systems and methods that detect process defects in large-scale manufacturing processes, such as the manufacture of pharmaceutical dosage units, using continuous spectral imaging techniques.
  • BACKGROUND OF THE INVENTION
  • Defects in pharmaceutical products can be highly dangerous, or even fatal. And even if such defects are relatively minor, such as non-uniformly sized capsules, they can result in a significant loss of goodwill by the manufacturer. It is therefore of the utmost importance to avoid such defects.
  • Several approaches now exist to screen pharmaceutical agents packaged in predetermined dosage units, such as capsules or tablets. These include off-line and on-line methods. Off-line methods include-the testing of samples of reagents and end-products using various analytical methods. On-line methods attempt to monitor the process of manufacturing the product to detect defects as they occur.
  • A number of on-line screening approaches currently exist. One approach includes adding coloring agents to bulk ingredients and optically checking the shape, integrity, and color of the final product. Systems employing this approach can take a series of video images of dosage units and use image processing methods to assess the shape and color of the dosage units. Other systems employ groups of discrete optical detectors to detect different colors and infrared detectors to detect the scattering caused by structural defects. These systems can be complicated to install and maintain, and cannot guarantee a defect-free product.
  • SUMMARY OF THE INVENTION
  • Several aspects of the invention are presented in this application. These relate to improvements to process control apparatus and methods, including apparatus and methods that detect process defects in large-scale manufacturing processes, such as the manufacture of pharmaceutical dosage units, using continuous spectral imaging techniques.
  • Systems according to the invention are advantageous in that they can continuously test the actual composition of each dosage unit within its packaging. Such systems can therefore screen for errors in coloring of ingredients, for contamination or breakdown that occurs independent of coloring, and for other types of errors that might not otherwise be detected. And because systems according to the invention can perform their composition measurements through the end-user package walls, they can detect contamination or damage that occurs during packaging.
  • Performing composition analysis by comparing spectral information with libraries of known spectral signatures, allows small concentrations of potentially dangerous contaminants, such as potent toxins, to be detected. Without being correlated to a specific spectral signature, such small concentrations might have little effect on prior art process monitoring methods, and might therefore be dismissed as within an error margin.
  • Performing composition analysis by comparing spectral information with libraries of known spectral signatures may also allow for the detection of unexpected components. Comparing acquired spectral information with libraries of components may uncover contaminants not normally associated with the process. This may allow a manufacturer to avert hazards that arise out of unforseen circumstances, such as supplier errors or deliberate tampering.
  • Performing composition analysis by comparing spectral information with libraries of known spectral signatures may further allow for the detection of subtle shifts in the process. Because relative quantities of ingredients can be directly measured, a change in the ratio of these ingredients can be detected. While such changes may not warrant rejection of the products, they may allow the process to be optimized and prevent the process from drifting out of its intending operating range.
  • Systems according to the invention may also be advantageous in that they can allow a process engineer to select optimal process variables to monitor. By mapping selected spectral information into an image, which is then processed by an image processor, systems according to the invention can apply the image processing resources to the spectral data that correlates best to known and predicted failure modes. And because the system acquires information about a large number of wavelengths simultaneously, a system operator can try a number of different approaches to achieve the best results.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • FIG. 1 is a diagram of an embodiment of a pharmaceutical dosage unit manufacturing process control system according to the invention, including a perspective portion illustrating the relationship between the image sensor, the spectrally selective element, and the process stream;
  • FIG. 2 is a plan view diagram of an image sensor for use with the process control system of FIG. 1;
  • FIG. 3 is a plan view diagram illustrating output of the system of FIG. 1;
  • FIG. 4 is a flowchart illustrating the operation of the embodiment of FIG. 1; and
  • FIG. 5 is a diagram of a second embodiment of a pharmaceutical dosage unit manufacturing process control system according to the invention, including a perspective portion illustrating the relationship between the image sensor, the spectrally selective element, and the process stream.
  • In the figures, like reference numbers represent like elements.
  • DESCRIPTION OF AN ILLUSTRATIVE EMBODIMENT
  • Referring to FIG. 1, a pharmaceutical dosage unit manufacturing process control system according to the invention features an image sensor 10 and a spectrally selective element 12 facing a web 16 that carries a series of parallel rows of pharmaceutical dosage units 18, such as capsules, tablets, pellets, ampoules, or vials, in a process flow direction. For example, the web can carry a continuous stream of blister-packaged tablets from the output of a packaging machine. The image sensor is a multi-element sensor that includes at least a series of adjacent sensing elements located generally along an axis that is perpendicular to the flow direction. The spectrally selective element is a wavelength separating element, and is preferably a dispersive element, such as a diffraction grating or a prism-based monochromator.
  • Referring to FIGS. 1-2, the image sensor 10 is preferably a two-dimensional array sensor that includes a two-dimensional array of detector elements made up of a series of lines of elements (A1-An, B1-Bn, . . . N1-Nn) that are each located generally along an axis that is perpendicular to the flow direction. The image sensor can include an array of integrated semiconductor elements, such as a Charge-Coupled Device (CCD) array, and is preferably sensitive to infrared radiation. Uncooled Idium-Galium-Arsenide (InGaAs) arrays, which are sensitive to near infrared wavelengths, are suitable image sensors, although sensitivity to longer wavelengths would be desirable. It is contemplated that the sensors should preferably have dimensions of at least 64×64 or even 256×256. Where such sensors are not square, they should-be oriented with their longer dimension in the direction of the process flow, as spectral information appears to be typically more important than spatial information given the nature of pharmaceutical mass-production equipment.
  • The system also includes an image acquisition interface 22 having an input port responsive to an output port of the image sensor 10. The image acquisition interface receives and/or formats image signals from the image sensor. It can include an off-the shelf frame buffer card with a 12-16 bit dynamic range, such as are available from Matrox Electronic Systems Ltd. of Montreal, Canada, and Dipix Technologies, of Ottawa, Canada.
  • A spectral processor 26 has an input responsive to the image acquisition interface 22. This spectral processor has a control output provided to a source control interface 20, which can power and control an illumination source 14. The illumination source for near infrared measurements is preferably a Quartz-Tungsten-Halide lamp.
  • The spectral processor 26 is also operatively connected to a standard input/output (IO) interface 30 and to a local spectral library 24. The local spectral library includes locally-stored spectral signatures for known process components. These components can include ingredients, process products, or results of process defects or contamination. The IO interface can also operatively connect the spectral processor to a remote spectral library 28.
  • The spectral processor 26 is operatively connected to an image processor 32 as well. The image processor can be an off-the-shelf programmable industrial image processor, that includes special-purpose image processing hardware and image evaluation routines that are operative to evaluate shapes and colors of manufactured objects in industrial environments. Such systems are available from, for example, Cognex, Inc.
  • In one embodiment, the system is based on the so-called IBM-PC architecture. The image acquisition interface 22, IO interface 30, and image processor 32 each occupy expansion slots on the system bus. The spectral processor is implemented using special-purpose spectral processing routines loaded on the host processor, and the local spectral library is stored in local mass storage, such as disk storage. Of course, other structures can be used to implement systems according to the invention, including various combinations of dedicated hardware and special-purpose software running on general-purpose hardware. In addition, the various elements and steps described can be reorganized, divided, and combined in different ways without departing from the scope and spirit of the invention. For example, many of the separate operations described above can be performed simultaneously according to well-known pipelining and parallel processing principles.
  • In operation, referring to FIGS. 1-4, the spectrally selective element 12 is sensitive to the radiation reflected off of a line across the process web 16, and collimated by a first-stage optic, such as a lens (not shown). The spectrally selective element separates the spectral components of the reflected radiation along the axis of the process flow. As a result, the successive lines A1-An, B1-Bn, . . . N1-Nn of the image sensor are exposed to spectral components of the radiation that are of successively higher or lower wavelengths, depending on the relative orientation of the spectrally selective element and the image sensor. In one embodiment, a portion of the line image extends beyond the web to overlap with a stationary reference sample 19 located adjacent the web. This implementation can allow for the removal of transfer of calibration requirements between systems that collect pure component spectra for spectral comparison.
  • At a predetermined repetition rate, the image acquisition interface 22 acquires a data set representative of the radiation incident on the image sensor (i.e., a spectral line image—step 40). This data set includes image values for each of the pixels along the imaged line on the process web at a number of different wavelengths. In the case of a 256×256 array, intensity values at 256 different wavelengths will be stored for each of 256 points on the imaged line. Once it has been acquired, the image acquisition interface transfers this data set to the spectral processor 26.
  • The spectral processor 26 then evaluates the acquired spectral line image (step 42). This evaluation can include a variety of univariate and multivariate spectral manipulations. These can include comparing received spectral information with spectral signatures stored in the library, comparing received spectral information attributable to manufactured dosage units with information attributable to the reference sample, or evaluating simplified test functions, such as looking for the absence of a particular wavelength or combination of wavelengths. Multivariate spectral manipulations are discussed in more detail in “Multivariate Image Analysis,” by Paul Geladi and Hans, Grahn, available from John Wiley, ISBN No. 0-471-93001-6, which is herein incorporated by reference.
  • As a result of its evaluation, the spectral processor 26 may detect known components (step 44) and/or unknown components (step 46). If an unknown component is detected, the system records a spectral signature entry for the new component type in the local spectral library 24 (step 48). The system can also attempt to identify the newly detected component in an extended or remote library 28, such as by accessing it through a telephone line or computer network (step 50). The system then flags the detection of the new component to the system operator, and reports any retrieved candidate identities (step 52).
  • Once component identification is complete, the system maps the different detected components into a color (such as grayscale) line image (step 54). As the system processes further spectral line images, it accumulates a two-dimensional colored image frame. When complete, this image can be transferred to the image processor (step 58), which evaluates the shape and color of the dosage units (step 60), issues rejection signals for rejected dosage units, and compiles operation logs.
  • As shown in FIG. 3, the color image will resemble the process web, although it may be stretched or squeezed in the direction of the process flow, depending on the acquisition rate. The image can include a color that represents the composition of the web 16. It will can also include colors that represent known good components 18A, colors that represent known defect components 18B, and colors that represent unknown components 18C. The mapping can also take the form of a spectral shift, in which some or all of the acquired spectral components are shifted in a similar manner, preserving the relationship between wavelengths. Note that because the image maps components to colors, it provides information about spatial distribution of the pharmaceutical composition in addition to identifying its components.
  • While the system can operate in real-time to detect defective products, its results can also be analyzed further off-line. For example, some or all of the spectral data sets, or running averages derived from these data sets can be stored and periodically compared with extensive off-line databases of spectral signatures to detect possible new contaminants. Relative spectral intensities arising from relative amounts of reagents or ingredients can also be computed to determine if the process is optimally adjusted.
  • Note that the system presented above is self-scanning. Although it can be synchronized with the process by a sensor, such synchronization is not required. The system can therefore be easily retrofit to existing installations and does not require any moving parts.
  • The acquisition method employed by the process control system can also be computationally efficient. Since data is acquired and spectrally processed on a line-by-line basis, the spectral processor does not have to store large amounts of intermediate results. Once a line has been mapped to a colored line image, all of the acquired data and intermediate results can be discarded, and a new line processed. This can allow the system to operate in real time with relatively simple computer components, keeping the overall system cost low.
  • Referring to FIG. 5, a second embodiment of a pharmaceutical dosage unit manufacturing process control system according to the invention includes a variable-bandpass filter 12 a between the two-dimensional array sensor and the process stream. This filter has a narrow pass-band with a center wavelength that varies along the process direction. The leading edge A of the filter passes shorter wavelengths, and as the distance from the leading edge along the process flow direction increases, the filter passes successively longer wavelengths. At the trailing edge N of the filter, the filter passes a narrow range of the longest wavelengths. The orientation of the filter can also be reversed, so that the pass-band center wavelength decreases along the process flow direction. Although the filter has been illustrated as a series of strips located perpendicular to the process flow direction, it can be manufactured in practice by continuously varying the dielectric thickness in an interference filter. Preferably, the filter should have a range of pass-bands that matches the range of the camera. Suitable filters are available, for example, from Optical Coatings Laboratory, Inc. of Santa Rosa, Calif.
  • In operation of this embodiment, acquisition interface 22 acquires data representing a series of variably-filtered, two-dimensional images. These two-dimensional images each include image values for the pixels in a series of adjacent lines perpendicular to the process web. Because of the action of the variable-bandpass filter, the detected line images that make up each two-dimensional image will have a spectral content that varies along the process direction.
  • The variably filtered images are combined as they are acquired in order to obtain full-range spectral images. As each imaged line progresses along the web, each successive line (N1 . . . A1) of elements in the array sensor 10 will sense radiation that has been filtered through a corresponding line (N . . . A) of the filter. These individual line images can be assembled to create a full-spectrum line image. The assembly can take place by itself, or in combination with other operations, such as digital filtering operations. This embodiment is particularly advantageous because the variable-bandpass filter is relatively inexpensive and robust.
  • Another approach involves the use of an optical system that simultaneously projects a number of spectrally-discrete versions of the same two-dimensional image onto the array sensor 10. Such systems are described in PCT application No. PCT/US98/14218 published under No. WO09902950, which are herein incorporated by reference. The use of these systems is advantageous in that they allow high data throughputs for a given web speed, without adding moving parts. Systems of this type are available from Optical Insights, Inc of Tucson, Ariz.
  • A further embodiment employs multi-source arrays to provide successive illumination at different wavelengths and thereby obtain spectral information from the process. Such arrays are described in a copending provisional application entitled “Multi-Source Arrays,” filed on the same day as this application, and herein incorporated by reference.
  • The present invention has now been described in connection with a number of specific embodiments thereof. However, numerous modifications which are contemplated as falling within the scope of the present invention should now be apparent to those skilled in the art. For example, aspects of the invention may also be applicable to other types of manufacturing processes, such in detecting the presence of undesirable by-products in the manufacture of plastic articles. In addition, while a two-dimensional image sensor with a dispersive or graded spectrally selective element is at present contemplated to be the best approach to acquiring line image data, a one-dimensional image sensor coupled with a high-speed filtering system might allow a suitable amount of data to be acquired in some circumstances. Therefore, it is intended that the scope of the present invention be limited only by the scope of the claims appended hereto. In addition, the order of presentation of the claims should not be construed to limit the scope of any particular term in the claims.

Claims (20)

1. A pharmaceutical dosage unit manufacturing process control apparatus, comprising:
an image sensor including an array of detector elements located generally along an axis that is perpendicular to a direction of a flow of pharmaceutical dosage units,
a spectrally selective element located in an optical path between a radiation source, the flow of pharmaceutical dosage units, and the image sensor, and
a spectral processor responsive to an output of the array sensor and having an output port.
2. The apparatus of claim 1 wherein the spectral processor includes a color mapping module operative to map spectral information into a color image including differently colored areas that correspond to different parts of the flow of pharmaceutical dosage units having differing responses to different wavelengths.
3. The apparatus of claim 2 further including an additional processor operative to evaluate the differently colored areas, the additional processor having an input responsive to the mapping module and an output for providing information about the areas.
4. The apparatus of claim 2 wherein the mapping module is operative to shift a plurality of the wavelengths in a similar manner.
5. The apparatus of claim 1 wherein the spectral processor includes a spectral comparison module operative to compare spectral signatures from a library of known spectral signatures with spectral information acquired from the image sensor.
6. The apparatus of claim 5 wherein the spectral comparison module is operative to perform spectral comparisons between the spectral information acquired from the image sensor and spectral signatures for known ingredients in a pharmaceutical composition of the dosage units.
7. The apparatus of claim 5 wherein the processor is operative to receive, identify, and store newly detected spectral signatures reported by the spectral comparison module.
8. The apparatus of claim 5 wherein the library of known spectral signatures includes a plurality of spectral signatures for known defects.
9. The apparatus of claim 8 wherein the processor is operative to receive, identify, and store spectral signatures for newly detected defects reported by the spectral comparison module.
10. The apparatus of claim 1 wherein the spectral processor includes a spectral comparison module operative to compare spectral information received by the image sensor from a reference sample located proximate the flow of pharmaceutical dosage units with spectral information received by the image sensor from the flow of pharmaceutical dosage units.
11. The apparatus of claim 1 wherein the image sensor is a two-dimensional array sensor that further includes detectors located generally along an axis that is parallel to the direction of the flow of pharmaceutical dosage units.
12. The apparatus of claim 11 wherein the spectrally selective element includes a diffraction grating.
13. The apparatus of claim 11 wherein the spectral processor includes a color mapping module operative to map spectral information into a color image including differently colored areas that correspond to different parts of the flow of pharmaceutical dosage units having differing responses to different wavelengths.
14. The apparatus of claim 1 further including an image processor responsive to the output port of the spectral processor and operative to evaluate information from the spectral processor.
15. The apparatus of claim 1 wherein the image sensor is an infrared image sensor.
16. The apparatus of claim 1 wherein the image sensor is a near infrared image sensor.
17. The apparatus of claim 1 further including the radiation source directed at the flow of pharmaceutical dosage units at a position to which the array sensor is responsive.
18. The apparatus of claim 17 wherein the radiation source is an infrared radiation source.
19. The apparatus of claim 1 wherein the flow of pharmaceutical dosage units includes a series of dosage units located in rows generally perpendicular to the direction of the flow of pharmaceutical dosage units and wherein the image sensor includes, for each of the dosage units in a row, a plurality of detectors along the axis that is perpendicular to the direction of the flow of pharmaceutical dosage units.
20. The apparatus of claim 1 wherein the spectral processor is a real-time processor operative to process the images at a rate that is at least equal to a rate at which images are acquired by the image sensor.
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