Naji Hussein, Hahn Paul, Pisula Juan I, Ugliano Stefano, Simon Adrian, Büttner Reinhard, Bozek Katarzyna
Institute for Biomedical Informatics, Faculty of Medicine and University Hospital Cologne, University of Cologne, Cologne, Germany.
Center for Molecular Medicine Cologne (CMMC), Faculty of Medicine and University Hospital Cologne, University of Cologne, Cologne, Germany.
BJC Rep. 2025 May 20;3(1):34. doi: 10.1038/s44276-025-00147-0.
The heterogeneous and aggressive nature of diffuse large B-cell lymphoma (DLBCL) presents significant treatment challenges as up to 50% of patients experience recurrence of disease after chemotherapy. Upfront detection of recurring patients could offer alternative treatments. Deep learning has shown potential in predicting recurrence of various cancer types but suffers from lack of interpretability. Particularly in prediction of recurrence, an understanding of the model's decision could eventually result in novel treatments.
We developed a deep learning-based pipeline to predict recurrence of DLBCL based on histological images of a publicly available cohort. We utilized attention-based classification to highlight areas within the images that were of high relevance for the model's classification. Subsequently, we segmented the nuclei within these areas, calculated morphological features, and statistically analyzed them to find differences between recurred and non-recurred patients.
We achieved an f1 score of 0.88 indicating that our model can distinguish non-recurred from recurred patients. Additionally, we found that features that are the most predictive of recurrence include large and irregularly shaped tumor cell nuclei.
Our work underlines the value of histological images in predicting treatment outcomes and enhances our understanding of complex biological processes in aggressive, heterogeneous cancers like DLBCL.
弥漫性大B细胞淋巴瘤(DLBCL)具有异质性和侵袭性,这给治疗带来了重大挑战,因为高达50%的患者在化疗后会出现疾病复发。对复发患者的早期检测可以提供替代治疗方案。深度学习在预测各种癌症类型的复发方面已显示出潜力,但缺乏可解释性。特别是在预测复发时,了解模型的决策最终可能会带来新的治疗方法。
我们开发了一种基于深度学习的流程,用于根据一个公开可用队列的组织学图像预测DLBCL的复发。我们利用基于注意力的分类来突出图像中与模型分类高度相关的区域。随后,我们对这些区域内的细胞核进行分割,计算形态学特征,并对其进行统计分析,以找出复发患者和未复发患者之间的差异。
我们获得了0.88的F1分数,表明我们的模型能够区分未复发患者和复发患者。此外,我们发现最能预测复发的特征包括大的和形状不规则的肿瘤细胞核。
我们的工作强调了组织学图像在预测治疗结果方面的价值,并增强了我们对像DLBCL这样侵袭性、异质性癌症中复杂生物学过程的理解。