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基于机器学习的病理组学特征可作为透明细胞肾细胞癌患者的一种新的预后标志物。

Machine learning-based pathomics signature could act as a novel prognostic marker for patients with clear cell renal cell carcinoma.

机构信息

Department of Urology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

Department of Pathology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

出版信息

Br J Cancer. 2022 Mar;126(5):771-777. doi: 10.1038/s41416-021-01640-2. Epub 2021 Nov 25.

Abstract

BACKGROUND

Traditional histopathology performed by pathologists through naked eyes is insufficient for accurate survival prediction of clear cell renal cell carcinoma (ccRCC).

METHODS

A total of 483 whole slide images (WSIs) data from three patient cohorts were retrospectively analyzed. We performed machine learning algorithm to identify optimal digital pathological features and constructed machine learning-based pathomics signature (MLPS) for ccRCC patients. Prognostic performance of the prognostic model was also verified in two independent validation cohorts.

RESULTS

MLPS could significantly distinguish ccRCC patients with high survival risk, with hazard ratio of 15.05, 4.49 and 1.65 in three independent cohorts, respectively. Cox regression analysis revealed that the MLPS could act as an independent prognostic factor for ccRCC patients. Integration nomogram based on MLPS, tumour stage system and tumour grade system improved the current survival prediction accuracy for ccRCC patients, with area under curve value of 89.5%, 90.0%, 88.5% and 85.9% for 1-, 3-, 5- and 10-year disease-free survival prediction.

DISCUSSION

The machine learning-based pathomics signature could act as a novel prognostic marker for patients with ccRCC. Nevertheless, prospective studies with multicentric patient cohorts are still needed for further verifications.

摘要

背景

传统的病理学家通过肉眼进行的组织病理学检查不足以准确预测透明细胞肾细胞癌(ccRCC)的生存情况。

方法

回顾性分析了来自三个患者队列的共 483 张全切片图像(WSI)数据。我们使用机器学习算法来识别最佳的数字病理学特征,并为 ccRCC 患者构建基于机器学习的病理组学特征(MLPS)。还在两个独立的验证队列中验证了该预后模型的预后性能。

结果

MLPS 能够显著区分生存风险较高的 ccRCC 患者,在三个独立队列中的风险比分别为 15.05、4.49 和 1.65。Cox 回归分析表明,MLPS 可以作为 ccRCC 患者的独立预后因素。基于 MLPS、肿瘤分期系统和肿瘤分级系统的整合列线图提高了 ccRCC 患者的当前生存预测准确性,1 年、3 年、5 年和 10 年无病生存预测的曲线下面积值分别为 89.5%、90.0%、88.5%和 85.9%。

讨论

基于机器学习的病理组学特征可以作为 ccRCC 患者的一种新的预后标志物。然而,仍需要进行多中心患者队列的前瞻性研究来进一步验证。

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