Weakly-supervised classification of histopathology slides is a computationally intensive task, with a typical whole slide image (WSI) containing billions of pixels to process. We propose Discriminative Region Active Sampling for Multiple Instance Learning (DRAS-MIL), a computationally efficient slide classification method using attention scores to focus sampling on highly discriminative regions. We apply this to the diagnosis of ovarian cancer histological subtypes, which is an essential part of the patient care pathway as different subtypes have different genetic and molecular profiles, treatment options, and patient outcomes. We use a dataset of 714 WSIs acquired from 147 epithelial ovarian cancer patients at Leeds Teaching Hospitals NHS Trust to distinguish the most common subtype, high-grade serous carcinoma, from the other four subtypes (low-grade serous, endometrioid, clear cell, and mucinous carcinomas) combined. We demonstrate that DRAS-MIL can achieve similar classification performance to exhaustive slide analysis, with a 3-fold cross-validated AUC of 0.8679 compared to 0.8781 with standard attention-based MIL classification. Our approach uses at most 18% as much memory as the standard approach, while taking 33% of the time when evaluating on a GPU and only 14% on a CPU alone. Reducing prediction time and memory requirements may benefit clinical deployment and the democratisation of AI, reducing the extent to which computational hardware limits end-user adoption.
翻译:对病理学幻灯片进行微弱监督的分类是一项计算密集的任务,其典型的整张幻灯片图像(WSI)包含数十亿像素进行处理。我们建议使用一种计算高效的幻灯片分类方法,用注意力分数对高度歧视区域进行抽样抽样,对病理病理学幻灯片进行微弱监督分类,这是病人护理途径的一个基本部分,因为不同的子类型具有不同的遗传和分子特征、治疗选项和病人结果。我们使用从利兹教会医院NHS Trust 的147名上层卵巢癌病人那里获得的714个动像片数据集,以区分最常见的亚型高等级肿瘤,与其他四个亚型类(低等级的精髓、内分泌素、清晰的细胞和变性的肿瘤)的诊断。我们通过DRAS-MILL可以实现类似的分类业绩,与详尽的幻灯片分析相类似,从利德利兹医院医院医院的147名表卵巢癌癌症患者获得的714个数据集,其范围从147个上分级的显微缩缩微缩微缩缩缩缩缩微缩微缩微缩微缩缩缩缩缩缩微缩缩缩缩缩缩缩缩缩微缩缩缩缩缩缩缩缩缩缩缩缩缩缩图,然后用GLILULILLILLLILLLILIL在18的缩微缩微缩微缩微缩微缩缩缩缩缩缩缩缩缩缩取取取取取取取取取取取取法,在181,在0.8181和0.818的缩缩缩缩缩缩缩缩缩略取取取取取取取为0.181的缩缩缩缩缩缩算法。