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Deep convolutional neural networks: Outperforming established algorithms in the evaluation of industrial optical coherence tomography (OCT) images of pharmaceutical coatings

机译:深度卷积神经网络:在工业光学相干断层扫描(OCT)图像评估中表现优于良好的算法(OCT)的药物涂料图像

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摘要

This paper presents a novel evaluation approach for optical coherence tomography (OCT) image analysis of pharmaceutical solid dosage forms based on deep convolutional neural networks (CNNs). As a proof of concept, CNNs were applied to image data from both, in- and at-line OCT implementations, monitoring film-coated tablets as well as single- and multi-layered pellets. CNN results were compared against results from established algorithms based on ellipse-fitting, as well as to human-annotated ground truth data. Performance benchmarks used include, efficiency (computation speed), sensitivity (number of detections from a defined test set) and accuracy (deviation from the reference method). The results were validated by comparing the output of several algorithms to data manually annotated by human experts and microscopy images of cross-sectional cuts of the same dosage forms as a reference method. In order to guarantee comparability for all results, the algorithms were executed on the same hardware. Since modern OCT systems must operate under real-time conditions in order to be implemented in-line into manufacturing lines, the necessary steps are discussed on how to achieve this goal without sacrificing the algorithmic performance and how to tailor a deep CNN to cope with the high amount of image noise and alterations in object appearance. The developed deep learning approach outperforms static algorithms currently available in pharma applications with respect to performance benchmarks, and represents the next level in real time evaluation of challenging industrial OCT image data.
机译:本文提出了一种基于深卷积神经网络(CNNS)的药物固体剂型的光学相干断层扫描(OCT)图像分析的新型评价方法。作为概念证明,CNNS被应用于来自八管八元的八六元实施的图像数据,监测膜涂层的片剂以及单层和多层颗粒。将CNN结果与基于椭圆拟合的既定算法的结果进行比较,以及人为的地面真理数据。使用的性能基准包括,效率(计算速度),灵敏度(来自定义的测试集的检测次数)和精度(从参考方法偏差)。通过将若干算法的输出与人体专家和与相同剂型的横截面切口的显微镜图像进行手动注释的数据作为参考方法来验证结果。为了保证所有结果的可比性,算法在相同的硬件上执行。由于现代OCT系统必须在实时条件下运行,以便在线进入生产线,因此在不牺牲算法性能的情况下如何实现这一目标以及如何定制深层CNN以应对这一目标来讨论必要的步骤高量的图像噪音和物体外观的变化。开发的深度学习方法优于当前在Pharma应用程序中可用的静态算法以及性能基准,并且代表了实时评估的下一个级别,挑战工业OCT图像数据。

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