Automated tablet defect detection and the prediction of disintegration time and crushing strength with deep learning based on tablet surface images

IF 5.3 2区 医学 Q1 PHARMACOLOGY & PHARMACY International Journal of Pharmaceutics Pub Date : 2024-11-01 DOI:10.1016/j.ijpharm.2024.124896
Anna Diószegi , Máté Ficzere , Lilla Alexandra Mészáros, Orsolya Péterfi, Attila Farkas, Dorián László Galata, Zsombor Kristóf Nagy
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Abstract

This paper presents novel measurement methods, where deep learning was used to detect tableting defects and determine the crushing strength and disintegration time of tablets on images captured by machine vision. Five different classes of defects were used and the accuracy of the real-time defect recognition performed with the deep learning algorithm YOLOv5 was 99.2%. The system can already match the production capability of tablet presses, with still further room left for improvement. The YOLOv5 algorithm was also used to determine the disintegration time and crushing strength of tablets produced at different compression force settings based on their surface texture. With these accurate, low-cost methods, the 100% screening of the produced tablets could be carried out, resulting in the improvement of quality control and effectiveness of pharmaceutical production.

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基于片剂表面图像的片剂缺陷自动检测以及崩解时间和压碎强度的深度学习预测。
本文介绍了一种新的测量方法,即利用深度学习检测片剂缺陷,并通过机器视觉捕捉的图像确定片剂的压碎强度和崩解时间。使用深度学习算法 YOLOv5 对五种不同类别的缺陷进行实时识别,准确率达到 99.2%。该系统已经可以与压片机的生产能力相媲美,但仍有进一步提高的空间。YOLOv5 算法还用于根据片剂的表面纹理确定不同压片力设置下片剂的崩解时间和压片强度。利用这些精确、低成本的方法,可以对生产的片剂进行 100% 筛选,从而提高质量控制和药品生产的有效性。
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来源期刊
CiteScore
10.70
自引率
8.60%
发文量
951
审稿时长
72 days
期刊介绍: The International Journal of Pharmaceutics is the third most cited journal in the "Pharmacy & Pharmacology" category out of 366 journals, being the true home for pharmaceutical scientists concerned with the physical, chemical and biological properties of devices and delivery systems for drugs, vaccines and biologicals, including their design, manufacture and evaluation. This includes evaluation of the properties of drugs, excipients such as surfactants and polymers and novel materials. The journal has special sections on pharmaceutical nanotechnology and personalized medicines, and publishes research papers, reviews, commentaries and letters to the editor as well as special issues.
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