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Thyroid Cancer Malignancy Prediction From Whole Slide Cytopathology Images

机译:甲状腺癌性癌症恶性肿瘤患者的恶性预测

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We consider preoperative prediction of thyroid cancer based on ultra-high-resolution whole-slide cytopathology images. Inspired by how human experts perform diagnosis, our approach first identifies and classifies diagnostic image regions containing informative thyroid cells, which only comprise a tiny fraction of the entire image. These local estimates are then aggregated into a single prediction of thyroid malignancy. Several unique characteristics of thyroid cytopathology guide our deep-learning-based approach. While our method is closely related to multiple-instance learning, it deviates from these methods by using a supervised procedure to extract diagnostically relevant regions. Moreover, we propose to simultaneously predict thyroid malignancy, as well as a diagnostic score assigned by a human expert, which further allows us to devise an improved training strategy. Experimental results show that the proposed algorithm achieves performance comparable to human experts, and demonstrate the potential of using the algorithm for screening and as an assistive tool for the improved diagnosis of indeterminate cases.
机译:我们考虑了基于超高分辨率全载胞质病理学图像的术前预测甲状腺癌。灵感来自人类专家如何进行诊断,我们的方法首先识别和分类含有信息性甲状腺细胞的诊断图像区域,其仅包括整个图像的微小部分。然后将这些局部估计汇总为甲状腺恶性肿瘤的单一预测。甲状腺细胞病理学指导的几种独特特征引导我们深受教育的方法。虽然我们的方法与多实例学习密切相关,但它通过使用监督程序提取诊断相关区域来偏离这些方法。此外,我们建议同时预测甲状腺恶性肿瘤,以及由人类专家分配的诊断得分,进一步允许我们制定改进的培训策略。实验结果表明,该算法实现了与人体专家相当的性能,并证明了使用筛选算法和作为改善不确定病例诊断的辅助工具的可能性。

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