The prediction of microsatellite instability (MSI) and microsatellite stability (MSS) is essential in predicting both the treatment response and prognosis of gastrointestinal cancer. In clinical practice, a universal MSI testing is recommended, but the accessibility of such a test is limited. Thus, a more cost-efficient and broadly accessible tool is desired to cover the traditionally untested patients. In the past few years, deep-learning-based algorithms have been proposed to predict MSI directly from haematoxylin and eosin (H&E)-stained whole-slide images (WSIs). Such algorithms can be summarized as (1) patch-level MSI/MSS prediction, and (2) patient-level aggregation. Compared with the advanced deep learning approaches that have been employed for the first stage, only the na\"ive first-order statistics (e.g., averaging and counting) were employed in the second stage. In this paper, we propose a simple yet broadly generalizable patient-level MSI aggregation (MAg) method to effectively integrate the precious patch-level information. Briefly, the entire probabilistic distribution in the first stage is modeled as histogram-based features to be fused as the final outcome with machine learning (e.g., SVM). The proposed MAg method can be easily used in a plug-and-play manner, which has been evaluated upon five broadly used deep neural networks: ResNet, MobileNetV2, EfficientNet, Dpn and ResNext. From the results, the proposed MAg method consistently improves the accuracy of patient-level aggregation for two publicly available datasets. It is our hope that the proposed method could potentially leverage the low-cost H&E based MSI detection method. The code of our work has been made publicly available at https://github.com/Calvin-Pang/MAg.
翻译:预测微型卫星不稳定性(MSI)和微型卫星稳定性(MSS)对于预测治疗反应和胃肠癌预测都至关重要。在临床实践中,建议普遍进行MSI测试,但这种测试的可获取性有限。因此,希望有一个更具有成本效益和可广泛使用的工具,以覆盖传统上未经测试的病人。在过去几年中,提出了基于深层次学习的算法,以直接预测血氧素和易感知的全流图像(H&E)预测 MSI)。这种算法可以概括为:(1) 补丁级的MSI/MSS预测,以及(2) 病人一级汇总。与第一阶段使用的高级深层次学习方法相比,只有“头等”统计(例如,平均和计数)在第二阶段使用。在本文中,我们提出了一种简单但广泛可实现的病人一级MSII(MAG)汇总的方法,以有效地整合其宝贵的补码信息。简洁的MSI/MSI(MSIS)预言,从G-robrocal rocal roal residal Resal Resal Resal Resal resulational resulation resulational resmetal lap laft lave laft lave laft laft laveal disal disal laft laveal disal is thes laft laft supal laveal disal laft ma) laut thes laft lad lad supal maisal lad madal mad laved lad mad lad ma lad lad lad lad lad lad lad lad lad lad lad mad mad mad lad mad ladal lad lad lad lad ladal madal lad lad lad lad lad lad mad lad lad lad ladal lad ladal ladal ladal ladal ladal madal ro