Application of Deep Learning Convolutional Neural Networks for Internal Tablet Defect Detection: High Accuracy, Throughput, and Adaptability

被引:53
作者
Ma, Xiangyu [1 ]
Kittikunakorn, Nada [1 ]
Sorman, Bradley [2 ]
Xi, Hanmi [3 ]
Chen, Antong [3 ]
Marsh, Mike [4 ]
Mongeau, Arthur [4 ]
Piche, Nicolas [4 ]
Williams, Robert O., III [1 ]
Skomski, Daniel [5 ]
机构
[1] Univ Texas Austin, Coll Pharm, Mol Pharmaceut & Drug Delivery, 2409 Univ Ave, Austin, TX 78712 USA
[2] ExecuPharm, 610 Freedom Business Ctr Dr,Suite 200, King Of Prussia, PA 19406 USA
[3] Merck & Co Inc, MRL, 770 Sumneytown Pike, West Point, PA 19486 USA
[4] Object Res Syst, 760 St Paul West,Suite 101, Montreal, PQ H3C 1M4, Canada
[5] Merck & Co Inc, MRL, 126 E Lincoln Ave, Rahway, NJ 07065 USA
关键词
convolutional neural network; deep learning; internal tablet defects; automation oral formulation (high throughput) imaging data analysis; XRCT;
D O I
10.1016/j.xphs.2020.01.014
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Tablet defects encountered during the manufacturing of oral formulations can result in quality concerns, timeline delays, and elevated financial costs. Internal tablet cracking is not typically measured in routine inspections but can lead to batch failures such as tablet fracturing. X-ray computed tomography (XRCT) has become well-established to analyze internal cracks of oral tablets. However, XRCT normally generates very large quantities of image data (thousands of 2D slices per data set) which require a trained professional to analyze. A user-guided manual analysis is laborious, time-consuming, and subjective, which may result in a poor statistical representation and inconsistent results. In this study, we have developed an analysis program that incorporates deep learning convolutional neural networks to fully automate the XRCT image analysis of oral tablets for internal crack detection. The computer program achieves robust quantification of internal tablet cracks with an average accuracy of 94%. In addition, the deep learning tool is fully automated and achieves a throughput capable of analyzing hundreds of tablets. We have also explored the adaptability of the deep learning analysis program toward different products (e.g., different types of bottles and tablets). Finally, the deep learning tool is effectively implemented into the industrial pharmaceutical workflow. (C) 2020 American Pharmacists Association s . Published by Elsevier Inc. All rights reserved.
引用
收藏
页码:1547 / 1557
页数:11
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