Mariana Vargas-Clavijo, Nora Cardona-Castro, Juan Pablo Ospina-Gómez, Héctor Serrano-Coll
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引用次数: 0
Abstract
Introduction: Leprosy is a neglected infectious disease caused by Mycobacterium leprae and Mycobacterium lepromatosis and remains a public health challenge in tropical regions. Therefore, the development of technological tools such as machine learning (ML) offers an opportunity to innovate strategies for improving the diagnosis of this complex disease.
Objective: To validate the utility of different ML models for the histopathological diagnosis of Hansen disease.
Methodology: An observational study was conducted where 55 H&E-stained tissue slides from leprosy patients and 51 healthy skin controls were analyzed using microphotographs captured at various magnifications. These images were categorized based on histopathological findings and processed using the Cross-Industry Standard Process for Data Mining methodology for designing and training ML models. Five types of ML models were evaluated using standard metrics such as accuracy, sensitivity, and specificity, emphasizing data normalization as a fundamental step in optimizing model performance.
Results: The artificial neural network (ANN) model demonstrated an accuracy of 70%, sensitivity of 74%, and specificity of 65%, demonstrating its ability to identify leprosy cases with moderate precision. The receiver operating characteristic curve of the ANN model showed an area under the curve of 0.71. Conversely, models such as decision trees, logistic regression, and random forests showed similar accuracy results but with slightly lower sensitivity, potentially indicating a higher risk of false negatives in detecting leprosy-positive cases.
Conclusion: The ANN model emerges as a promising alternative for leprosy detection. However, further refinement of these models is necessary to enhance their adaptability across different clinical settings and participation in patient care.
导言:麻风病是由麻风分枝杆菌和麻风疫霉菌引起的一种被忽视的传染病,在热带地区仍是一项公共卫生挑战。因此,机器学习(ML)等技术工具的发展为改善这种复杂疾病的诊断提供了创新策略的机会:验证不同的 ML 模型对汉森氏病组织病理学诊断的实用性:我们开展了一项观察性研究,使用在不同放大倍率下拍摄的显微照片分析了55张麻风病人和51张健康皮肤对照组的H&E染色组织切片。这些图像根据组织病理学结果进行分类,并使用数据挖掘跨行业标准流程方法进行处理,以设计和训练 ML 模型。使用准确性、灵敏度和特异性等标准指标对五种类型的 ML 模型进行了评估,强调数据归一化是优化模型性能的基本步骤:结果:人工神经网络(ANN)模型的准确率为 70%,灵敏度为 74%,特异性为 65%,表明它有能力以中等精度识别麻风病例。ANN模型的接收者操作特征曲线显示曲线下面积为0.71。相反,决策树、逻辑回归和随机森林等模型显示出相似的准确性结果,但灵敏度略低,这可能表明在检测麻风病阳性病例时出现假阴性的风险较高:结论:ANN 模型是检测麻风病的一种有前途的替代方法。然而,有必要对这些模型进行进一步改进,以提高它们在不同临床环境中的适应性,并参与病人护理。
期刊介绍:
The American Journal of Dermatopathology offers outstanding coverage of the latest diagnostic approaches and laboratory techniques, as well as insights into contemporary social, legal, and ethical concerns. Each issue features review articles on clinical, technical, and basic science advances and illuminating, detailed case reports.
With the The American Journal of Dermatopathology you''ll be able to:
-Incorporate step-by-step coverage of new or difficult-to-diagnose conditions from their earliest histopathologic signs to confirmatory immunohistochemical and molecular studies.
-Apply the latest basic science findings and clinical approaches to your work right away.
-Tap into the skills and expertise of your peers and colleagues the world over peer-reviewed original articles, "Extraordinary cases reports", coverage of practical guidelines, and graphic presentations.
-Expand your horizons through the Journal''s idea-generating forum for debating controversial issues and learning from preeminent researchers and clinicians