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Automatic diagnostics of tuberculosis using convolutional neural networks analysis of MODS digital images

机译:使用卷积神经网络对MODS数字图像进行分析以自动诊断肺结核

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摘要

Tuberculosis is an infectious disease that causes ill health and death in millions of people each year worldwide. Timely diagnosis and treatment is key to full patient recovery. The Microscopic Observed Drug Susceptibility (MODS) is a test to diagnose TB infection and drug susceptibility directly from a sputum sample in 7–10 days with a low cost and high sensitivity and specificity, based on the visual recognition of specific growth cording patterns of M. Tuberculosis in a broth culture. Despite its advantages, MODS is still limited in remote, low resource settings, because it requires permanent and trained technical staff for the image-based diagnostics. Hence, it is important to develop alternative solutions, based on reliable automated analysis and interpretation of MODS cultures. In this study, we trained and evaluated a convolutional neural network (CNN) for automatic interpretation of MODS cultures digital images. The CNN was trained on a dataset of 12,510 MODS positive and negative images obtained from three different laboratories, where it achieved 96.63 +/- 0.35% accuracy, and a sensitivity and specificity ranging from 91% to 99%, when validated across held-out laboratory datasets. The model's learned features resemble visual cues used by expert diagnosticians to interpret MODS cultures, suggesting that our model may have the ability to generalize and scale. It performed robustly when validated across held-out laboratory datasets and can be improved upon with data from new laboratories. This CNN can assist laboratory personnel, in low resource settings, and is a step towards facilitating automated diagnostics access to critical areas in developing countries.
机译:结核病是一种传染性疾病,每年在全球造成数百万人的健康和死亡。及时的诊断和治疗是患者全面康复的关键。显微镜下观察到的药物敏感性(MODS)是一项基于肉眼观察到的M特定生长方式的鉴定,可在7-10天之内以低成本,高灵敏度和特异性直接从痰液样本中诊断出结核感染和药物敏感性。肉汤培养中的结核病。尽管具有优势,但MODS仍局限在远程,低资源设置中,因为它需要长期的,受过训练的技术人员来进行基于图像的诊断。因此,基于可靠的自动分析和MODS文化解释,开发替代解决方案非常重要。在这项研究中,我们训练和评估了用于自动解释MODS文化数字图像的卷积神经网络(CNN)。 CNN在从三个不同实验室获得的12,510个MODS阳性和阴性图像的数据集上进行了训练,在整个验证过程中进行验证时,其达到96.63 +/- 0.35%的准确度,灵敏度和特异性范围为91%至99%实验室数据集。该模型的学习功能类似于专家诊断人员用来解释MODS文化的视觉提示,这表明我们的模型可能具有泛化和扩展的能力。跨保留的实验室数据集进行验证时,该方法性能稳定,并可通过新实验室的数据加以改进。该CNN可以在资源匮乏的情况下为实验室人员提供帮助,并且是朝着帮助自动诊断人员进入发展中国家的关键区域迈出的一步。

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