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首页> 外文期刊>Journal of Pathology Informatics >Classification of melanocytic lesions in selected and whole-slide images via convolutional neural networks
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Classification of melanocytic lesions in selected and whole-slide images via convolutional neural networks

机译:通过卷积神经网络分类和全载图像中的黑素细胞病变的分类

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摘要

Whole-slide images (WSIs) are a rich new source of biomedical imaging data. The use of automated systems to classify and segment WSIs has recently come to forefront of the pathology research community. While digital slides have obvious educational and clinical uses, their most exciting potential lies in the application of quantitative computational tools to automate search tasks, assist in classic diagnostic classification tasks, and improve prognosis and theranostics. An essential step in enabling these advancements is to apply advances in machine learning and artificial intelligence from other fields to previously inaccessible pathology datasets, thereby enabling the application of new technologies to solve persistent diagnostic challenges in pathology. Here, we applied convolutional neural networks to differentiate between two forms of melanocytic lesions (Spitz and conventional). Classification accuracy at the patch level was 99.0%–2% when applied to WSI. Importantly, when the model was trained without careful image curation by a pathologist, the training took significantly longer and had lower overall performance. These results highlight the utility of augmented human intelligence in digital pathology applications, and the critical role pathologists will play in the evolution of computational pathology algorithms.
机译:全幻灯片(WSIS)是丰富的生物医学成像数据来源。使用自动化系统对分类和分部WSIS最近出现了病理研究界的前列。虽然数字幻灯片具有明显的教育和临床用途,但它们最令人兴奋的潜力在于应用定量计算工具以自动化搜索任务,协助经典诊断分类任务,并改善预后和治疗。实现这些进步的重要步骤是将机器学习和人工智能从其他领域应用于先前无法访问的病理数据集,从而能够应用新技术来解决病理学中的持续诊断挑战。在这里,我们应用了卷积神经网络,以区分两种形式的黑色细胞病变(Spitz和常规)。适用于WSI时,补丁级别的分类准确性为99.0%-2%。重要的是,当培训模型而没有仔细的病理学家进行仔细的图像策展时,培训显着更长,整体性能较低。这些结果突出了数字病理应用增强人类智能的效用,关键角色病理学家将在计算病理算法的演变中发挥作用。

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