Attention-based multiple instance learning (AMIL) algorithms have proven to be successful in utilizing gigapixel whole-slide images (WSIs) for a variety of different computational pathology tasks such as outcome prediction and cancer subtyping problems. We extended an AMIL approach to the task of survival prediction by utilizing the classical Cox partial likelihood as a loss function, converting the AMIL model into a nonlinear proportional hazards model. We applied the model to tissue microarray (TMA) slides of 330 lung cancer patients. The results show that AMIL approaches can handle very small amounts of tissue from a TMA and reach similar C-index performance compared to established survival prediction methods trained with highly discriminative clinical factors such as age, cancer grade, and cancer stage
翻译:基于关注的多实例学习(AMIL)算法已证明成功地利用了千兆像素整流图像(WSIs)来完成各种不同的计算病理学任务,例如结果预测和癌症亚型问题。我们把典型的Cox部分可能性作为一种损失函数,将AMIL模型转换成一种非线性比例危害模型,从而将AMIL方法推广到生存预测任务,将AMIL模型用于组织330名肺癌病人的微缩胶片。结果显示,AMIL方法可以处理TMA的极小数量的组织,并达到类似的C-指数性能,与受过年龄、癌症等级和癌症阶段等高度歧视性临床因素培训的既定生存预测方法相比。