Detecting cell types and densities in the tumor microenvironment improves prognostic risk assessment for breast cancer.

0 MEDICINE, RESEARCH & EXPERIMENTAL
Pu Liu, Xueli Zhang, Wenwen Wang, Yunping Zhu, Yongfang Xie, Yanhong Tai, Jie Ma
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Abstract

A comprehensive evaluation of the relationship between the densities of various cell types in the breast cancer tumor microenvironment and patient prognosis is currently lacking. Additionally, the absence of a large patch-level whole slide imaging (WSI) dataset of breast cancer with annotated cell types hinders the ability of artificial intelligence to evaluate cell density in breast cancer WSI. We first employed Lasso-Cox regression to build a breast cancer prognosis assessment model based on cell density in a population study. Pathology experts manually annotated a dataset containing over 70,000 patches and used transfer learning based on ResNet152 to develop an artificial intelligence model for identifying different cell types in these patches. The results showed that significant prognostic differences were observed among breast cancer patients stratified by cell density score (P = 0.0018), with the cell density score identified as an independent prognostic factor for breast cancer patients (P < 0.05). In the validation cohort, the predictive performance for overall survival (OS) was satisfactory, with area under the curve (AUC) values of 0.893 (OS) at 1-year, 0.823 (OS) at 3-year, and 0.861 (OS) at 5-year intervals. We trained a robust model based on ResNet152, achieving over 99% classification accuracy for different cell types in patches. These achievements offer new public resources and tools for personalized treatment and prognosis assessment.

检测肿瘤微环境中的细胞类型和密度可改进乳腺癌预后风险评估。
目前还缺乏对乳腺癌肿瘤微环境中各种细胞类型密度与患者预后之间关系的全面评估。此外,由于缺乏带有细胞类型注释的大型乳腺癌斑块级全切片成像(WSI)数据集,人工智能评估乳腺癌 WSI 中细胞密度的能力受到了阻碍。我们首先利用 Lasso-Cox 回归技术,在一项群体研究中建立了基于细胞密度的乳腺癌预后评估模型。病理专家对包含 7 万多个斑块的数据集进行人工标注,并使用基于 ResNet152 的迁移学习来开发人工智能模型,以识别这些斑块中的不同细胞类型。结果显示,按细胞密度评分分层的乳腺癌患者在预后方面存在明显差异(P = 0.0018),细胞密度评分被确定为乳腺癌患者的独立预后因素(P < 0.05)。在验证队列中,总生存期(OS)的预测效果令人满意,1 年期的曲线下面积(AUC)值为 0.893(OS),3 年期的曲线下面积(AUC)值为 0.823(OS),5 年期的曲线下面积(AUC)值为 0.861(OS)。我们训练了一个基于 ResNet152 的稳健模型,对斑块中不同细胞类型的分类准确率超过 99%。这些成果为个性化治疗和预后评估提供了新的公共资源和工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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