基于 CT 图像的稳健深度学习方法与不确定性估计用于肾细胞癌的病理分类

Ni Yao, Hang Hu, Kaicong Chen, Huan Huang, Chen Zhao, Yuan Guo, Boya Li, Jiaofen Nan, Yanting Li, Chuang Han, Fubao Zhu, Weihua Zhou, Li Tian
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引用次数: 0

摘要

本研究开发并验证了一种基于深度学习的诊断模型,该模型具有不确定性估计功能,可帮助放射科医生根据计算机断层扫描(CT)图像对肾细胞癌(RCC)的病理亚型进行术前分型。该模型通过五倍交叉验证进行训练,将 RCC 亚型分为透明细胞 RCC(ccRCC)、乳头状 RCC(pRCC)和嗜色细胞 RCC(chRCC)。为了评估该模型的性能,对来自第二中心的 78 名患者进行了外部验证。在五倍交叉验证中,ccRCC、pRCC和chRCC分类的接收者操作特征曲线下面积(AUC)分别为0.868(95% CI,0.826-0.923)、0.846(95% CI,0.812-0.886)和0.839(95% CI,0.802-0.88)。在外部验证集中,ccRCC、pRCC和chRCC的AUC分别为0.856(95% CI,0.838-0.882)、0.787(95% CI,0.757-0.818)和0.793(95% CI,0.758-0.831)。该模型在预测 RCC 的病理亚型方面表现出稳健的性能,而纳入的不确定性则强调了了解模型置信度的重要性。所提出的方法与不确定性估计相结合,为临床医生提供了双重优势:准确的 RCC 亚型预测与诊断置信度指标相辅相成,从而促进了 RCC 患者的知情决策。
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A Robust Deep Learning Method with Uncertainty Estimation for the Pathological Classification of Renal Cell Carcinoma Based on CT Images.

This study developed and validated a deep learning-based diagnostic model with uncertainty estimation to aid radiologists in the preoperative differentiation of pathological subtypes of renal cell carcinoma (RCC) based on computed tomography (CT) images. Data from 668 consecutive patients with pathologically confirmed RCC were retrospectively collected from Center 1, and the model was trained using fivefold cross-validation to classify RCC subtypes into clear cell RCC (ccRCC), papillary RCC (pRCC), and chromophobe RCC (chRCC). An external validation with 78 patients from Center 2 was conducted to evaluate the performance of the model. In the fivefold cross-validation, the area under the receiver operating characteristic curve (AUC) for the classification of ccRCC, pRCC, and chRCC was 0.868 (95% CI, 0.826-0.923), 0.846 (95% CI, 0.812-0.886), and 0.839 (95% CI, 0.802-0.88), respectively. In the external validation set, the AUCs were 0.856 (95% CI, 0.838-0.882), 0.787 (95% CI, 0.757-0.818), and 0.793 (95% CI, 0.758-0.831) for ccRCC, pRCC, and chRCC, respectively. The model demonstrated robust performance in predicting the pathological subtypes of RCC, while the incorporated uncertainty emphasized the importance of understanding model confidence. The proposed approach, integrated with uncertainty estimation, offers clinicians a dual advantage: accurate RCC subtype predictions complemented by diagnostic confidence metrics, thereby promoting informed decision-making for patients with RCC.

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