Combining Artificial Intelligence and Simplified Image Processing for the Automatic Detection of Mycobacterium tuberculosis in Acid-fast Stain: A Cross-institute Training and Validation Study.

Hsiang Sheng Wang, Wen-Yih Liang
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Abstract

Tuberculosis (TB) poses a significant health threat in Taiwan, necessitating efficient detection methods. Traditional screening for acid-fast positive bacilli in acid-fast stain is time-consuming and prone to human error due to staining artifacts. To address this, we present an automated TB detection platform leveraging deep learning and image processing. Whole slide images from 2 hospitals were collected and processed on a high-performance system. The system utilizes an image processing technique to highlight red, rod-like regions and a modified EfficientNet model for binary classification of TB-positive regions. Our approach achieves a 97% accuracy in tile-based TB image classification, with minimal loss during the image processing step. By setting a 0.99 threshold, false positives are significantly reduced, resulting in a 94% detection rate when assisting pathologists, compared with 68% without artificial intelligence assistance. Notably, our system efficiently identifies artifacts and contaminants, addressing challenges in digital slide interpretation. Cross-hospital validation demonstrates the system's adaptability. The proposed artificial intelligence-assisted pipeline improves both detection rates and time efficiency, making it a promising tool for routine pathology work in TB detection.
结合人工智能和简化图像处理自动检测酸性染色中的结核分枝杆菌:跨机构培训与验证研究》。
结核病(TB)对台湾的健康构成严重威胁,因此需要高效的检测方法。传统的耐酸染色法筛查耐酸阳性杆菌不仅耗时,而且容易因染色伪影而造成人为误差。针对这一问题,我们提出了一种利用深度学习和图像处理的结核病自动检测平台。我们收集了两家医院的整张玻片图像,并在高性能系统上进行了处理。该系统利用图像处理技术突出红色杆状区域,并利用改进的 EfficientNet 模型对结核阳性区域进行二元分类。我们的方法在基于瓦片的结核病图像分类中达到了 97% 的准确率,而且在图像处理步骤中损失最小。通过设置 0.99 的阈值,误报率大大降低,因此在协助病理学家的情况下,检测率达到 94%,而在没有人工智能协助的情况下,检测率仅为 68%。值得注意的是,我们的系统能有效识别伪影和污染物,解决了数字幻灯片解读中的难题。跨医院验证证明了该系统的适应性。所提出的人工智能辅助管道提高了检测率和时间效率,使其成为结核病检测中一种很有前途的常规病理工作工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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