Internet Technology and Data Science Lab (IDLab/IMEC), Ghent University, Gent, Belgium.
Department of Plant biotechnology and Bioinformatics, Ghent University, Gent, Belgium.
Cancer Res. 2023 Sep 1;83(17):2970-2984. doi: 10.1158/0008-5472.CAN-22-3113.
In prostate cancer, there is an urgent need for objective prognostic biomarkers that identify the metastatic potential of a tumor at an early stage. While recent analyses indicated TP53 mutations as candidate biomarkers, molecular profiling in a clinical setting is complicated by tumor heterogeneity. Deep learning models that predict the spatial presence of TP53 mutations in whole slide images (WSI) offer the potential to mitigate this issue. To assess the potential of WSIs as proxies for spatially resolved profiling and as biomarkers for aggressive disease, we developed TiDo, a deep learning model that achieves state-of-the-art performance in predicting TP53 mutations from WSIs of primary prostate tumors. In an independent multifocal cohort, the model showed successful generalization at both the patient and lesion level. Analysis of model predictions revealed that false positive (FP) predictions could at least partially be explained by TP53 deletions, suggesting that some FP carry an alteration that leads to the same histological phenotype as TP53 mutations. Comparative expression and histologic cell type analyses identified a TP53-like cellular phenotype triggered by expression of pathways affecting stromal composition. Together, these findings indicate that WSI-based models might not be able to perfectly predict the spatial presence of individual TP53 mutations but they have the potential to elucidate the prognosis of a tumor by depicting a downstream phenotype associated with aggressive disease biomarkers.
Deep learning models predicting TP53 mutations from whole slide images of prostate cancer capture histologic phenotypes associated with stromal composition, lymph node metastasis, and biochemical recurrence, indicating their potential as in silico prognostic biomarkers. See related commentary by Bordeleau, p. 2809.
在前列腺癌中,迫切需要客观的预后生物标志物,以便在早期识别肿瘤的转移潜力。虽然最近的分析表明 TP53 突变是候选生物标志物,但在临床环境中进行分子谱分析受到肿瘤异质性的影响。预测全切片图像 (WSI) 中 TP53 突变空间存在的深度学习模型提供了缓解这一问题的潜力。为了评估 WSI 作为空间分辨分析的替代物以及作为侵袭性疾病生物标志物的潜力,我们开发了 TiDo,这是一种深度学习模型,可在预测原发性前列腺肿瘤 WSI 中的 TP53 突变方面达到最先进的性能。在独立的多病灶队列中,该模型在患者和病变水平均成功实现了泛化。对模型预测的分析表明,假阳性 (FP) 预测至少部分可以通过 TP53 缺失来解释,这表明一些 FP 携带一种改变,导致与 TP53 突变相同的组织学表型。比较表达和组织学细胞类型分析确定了由影响基质组成的途径表达引发的 TP53 样细胞表型。总之,这些发现表明,基于 WSI 的模型可能无法完美预测单个 TP53 突变的空间存在,但它们有可能通过描绘与侵袭性疾病生物标志物相关的下游表型来阐明肿瘤的预后。
从前列腺癌全切片图像预测 TP53 突变的深度学习模型捕获了与基质组成、淋巴结转移和生化复发相关的组织学表型,表明它们有作为计算机辅助预后生物标志物的潜力。见 Bordeleau 的相关评论,第 2809 页。