Gupta Shruti, Mohani Vikash K, Ghislat Ghita, Ballester Pedro J, Ahmad Shandar
School of Computational and Integrative Sciences, Jawaharlal Nehru University, New Delhi, India.
The Francis Crick Institute, London NW1 1AT, UK.
NAR Genom Bioinform. 2025 Aug 28;7(3):lqaf111. doi: 10.1093/nargab/lqaf111. eCollection 2025 Sep.
The translatability of patient-derived xenograft (PDX)-generated clinical data into patient-specific outcomes for therapeutic guidance is limited by the challenges in generalizability of models across patients, treatments, and cancer types. Previously, machine learning (ML) models have been developed for the two most abundant cancer types, i.e. breast cancer and colorectal cancer, but these are unusable in other cancer types because each treatment/cancer type requires a different model to be trained. Here, we provide an ML framework to train a single pan-cancer, pan-treatment model for predicting treatment outcomes. We show that such models give promising results for all cancer types considered and reproduce the accuracy levels of individually trained cancer types. In the proposed model, all PDX genomic profiles from all cancer types are used as the training data, and instead of partitioning them into cancer types for each model, the cancer type and treatment name are appended as the input features of the training model. Using genomic-only and treatment-only embeddings and combining them with principal component analysis-based dimensionality reduction, our models show promising results and provide a framework for further improvements and real-time use for best treatment selections for cancer patients.
患者来源异种移植(PDX)生成的临床数据转化为用于治疗指导的患者特异性结果的可翻译性受到模型在不同患者、治疗方法和癌症类型之间通用性挑战的限制。此前,针对两种最常见的癌症类型,即乳腺癌和结直肠癌,开发了机器学习(ML)模型,但这些模型在其他癌症类型中无法使用,因为每种治疗方法/癌症类型都需要训练不同的模型。在此,我们提供了一个ML框架,用于训练一个单一的泛癌症、泛治疗模型来预测治疗结果。我们表明,此类模型对所有考虑的癌症类型都给出了有前景的结果,并重现了单独训练的癌症类型的准确率水平。在所提出的模型中,来自所有癌症类型的所有PDX基因组概况都用作训练数据,并且不是将它们按癌症类型划分为每个模型,而是将癌症类型和治疗名称作为训练模型的输入特征附加。使用仅基因组和仅治疗的嵌入,并将它们与基于主成分分析的降维相结合,我们的模型显示出有前景的结果,并为进一步改进以及为癌症患者选择最佳治疗方法的实时应用提供了一个框架。