甲状腺细胞病理学的深层语义移动应用程序

Edward Kim, M. Côrte-Real, Z. Baloch
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引用次数: 80

摘要

细胞病理学是在细胞水平上研究疾病的一门学科,常被用作癌症的筛查工具。甲状腺细胞病理学是研究甲状腺病变和疾病诊断的病理学分支。由于不同的解剖结构和病理特征,病理学家观察的细胞图像可能具有很高的视觉差异。为了帮助医生识别和搜索图像,我们提出了一个深度语义移动应用程序。我们的工作增强了病理学数字化和机器学习技术的最新进展,在这些领域,计算机有机会帮助病理学家。我们的系统使用自定义甲状腺本体,可以使用深度机器学习技术从图像中提取的多媒体元数据进行增强。我们描述了一种特殊的方法,深度卷积神经网络的利用,以应用细胞病理学分类。我们的方法能够利用已经在数百万张通用图像上训练过的网络,到只有数百或数千张图像存在的医疗场景。我们通过定量和定性结果展示了我们的框架的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep semantic mobile application for thyroid cytopathology
Cytopathology is the study of disease at the cellular level and often used as a screening tool for cancer. Thyroid cytopathology is a branch of pathology that studies the diagnosis of thyroid lesions and diseases. A pathologist views cell images that may have high visual variance due to different anatomical structures and pathological characteristics. To assist the physician with identifying and searching through images, we propose a deep semantic mobile application. Our work augments recent advances in the digitization of pathology and machine learning techniques, where there are transformative opportunities for computers to assist pathologists. Our system uses a custom thyroid ontology that can be augmented with multimedia metadata extracted from images using deep machine learning techniques. We describe the utilization of a particular methodology, deep convolutional neural networks, to the application of cytopathology classification. Our method is able to leverage networks that have been trained on millions of generic images, to medical scenarios where only hundreds or thousands of images exist. We demonstrate the benefits of our framework through both quantitative and qualitative results.
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