The accurate diagnosis and molecular profiling of colorectal cancers are critical for planning the best treatment options for patients. Microsatellite instability (MSI) or mismatch repair (MMR) status plays a vital role inappropriate treatment selection, has prognostic implications and is used to investigate the possibility of patients having underlying genetic disorders (Lynch syndrome). NICE recommends that all CRC patients should be offered MMR/microsatellite instability (MSI) testing. Immunohistochemistry is commonly used to assess MMR status with subsequent molecular testing performed as required. This incurs significant extra costs and requires additional resources. The introduction of automated methods that can predict MSI or MMR status from a target image could substantially reduce the cost associated with MMR testing. Unlike previous studies on MSI prediction involving training a CNN using coarse labels (Microsatellite Instable vs Microsatellite Stable), we have utilised fine-grain MMR labels for training purposes. In this paper, we present our work on predicting MSI status in a two-stage process using a single target slide either stained with CK8/18 or H\&E. First, we trained a multi-headed convolutional neural network model where each head was responsible for predicting one of the MMR protein expressions. To this end, we performed the registration of MMR stained slides to the target slide as a pre-processing step. In the second stage, statistical features computed from the MMR prediction maps were used for the final MSI prediction. Our results demonstrated that MSI classification can be improved by incorporating fine-grained MMR labels in comparison to the previous approaches in which only coarse labels were utilised.
翻译:红外癌的准确诊断和分子剖面分析对于规划患者的最佳治疗选择至关重要。微型卫星不稳定或错配修复(MMMR)状况至关重要。微型卫星不稳定(MSI)或错配修复(MMMR)状况具有不适当的不适当治疗选择的重要作用,具有预测性影响,并用于调查患有遗传障碍(Lynch综合症)的患者的可能性。NICE建议,所有CRC病人都应接受MMR/微型卫星不稳定(MSI)测试。IMMR化学学通常用于评估MMMR状况,随后将进行分子测试。这需要大量额外费用并需要额外的资源。采用自动化方法,从目标图像中预测 MSI或MMMM(MMM)状况,可以大幅降低与MMR测试相关的成本。与以往关于MSI预测的研究不同,该预测涉及对CNNC(MR(MSS)进行粗略分布比值测试,我们用MMMMR(MR)前期的精确比值标签可以用来在两阶段预测MIS(MR)状况。我们用MR(MMMR)最终的标号)的标定值进行。我们用MMRL(MR(MMR)最后的标)的标程的标程前的标定标定结果,这是我们进行一次的预演化为MML)的预演算。我们用一个最后的预。