Ka Ho Tam, Maria F. Soares, Jesper Kers, Edward J. Sharples, Rutger Ploeg, M. Kaisar, Jens Rittscher
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Handcrafted and deep features were extracted from these tissues and combined using a soft attention model to predict several slide-level labels: delayed graft function (DGF), acute tubular injury (ATI), and Remuzzi grade components. A tissue segmentation quality metric was also developed to reduce the adverse impact of poorly segmented instances. The soft attention model was trained using 5-fold cross-validation on a mixed dataset and tested on the QUOD dataset containing n=373 PAS and n=195 SR biopsies. The average ROC-AUC over different prediction tasks was found to be 0.598±0.011, significantly higher than using only ResNet50 (0.545±0.012), only handcrafted features (0.542±0.011), and the baseline (0.532±0.012) of state-of-the-art performance. In conjunction with soft attention, weighting tissues by segmentation quality has led to further improvement (AUC=0.618±0.010). Using an intuitive visualisation scheme, we show that our approach may also be used to support clinical decision making as it allows pinpointing individual tissues relevant to the predictions.","PeriodicalId":483606,"journal":{"name":"Frontiers in Transplantation","volume":"83 2","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Predicting clinical endpoints and visual changes with quality-weighted tissue-based renal histological features\",\"authors\":\"Ka Ho Tam, Maria F. Soares, Jesper Kers, Edward J. Sharples, Rutger Ploeg, M. Kaisar, Jens Rittscher\",\"doi\":\"10.3389/frtra.2024.1305468\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Two common obstacles limiting the performance of data-driven algorithms in digital histopathology classification tasks are the lack of expert annotations and the narrow diversity of datasets. 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引用次数: 0
摘要
在数字组织病理学分类任务中,限制数据驱动算法性能的两个常见障碍是缺乏专家注释和数据集的多样性狭窄。多实例学习(Multi-instance Learning,MIL)可以解决前者在分析整张切片图像(WSI)时所面临的挑战,但其性能往往不如全面监督。我们的研究表明,加入弱注释可以显著提高 MIL 的效果,同时保持该方法的可扩展性。我们开发了一个分析框架来处理肾活检的周期性酸-希夫(PAS)和天狼星红(SR)玻片。工作流程将组织划分为粗略的组织类别。从这些组织中提取手工和深度特征,并使用软注意力模型进行组合,以预测多个幻灯片级标签:延迟移植物功能(DGF)、急性肾小管损伤(ATI)和雷穆齐分级成分。此外,还开发了一种组织分割质量指标,以减少分割不佳实例的不利影响。在混合数据集上使用 5 倍交叉验证对软注意力模型进行了训练,并在 QUOD 数据集上进行了测试,该数据集包含 n=373 个 PAS 和 n=195 个 SR 活检样本。结果发现,不同预测任务的平均 ROC-AUC 为 0.598±0.011,明显高于仅使用 ResNet50(0.545±0.012)、仅使用手工特征(0.542±0.011)和最先进性能基线(0.532±0.012)。与软关注相结合,根据分割质量对组织进行加权可进一步提高性能(AUC=0.618±0.010)。通过直观的可视化方案,我们展示了我们的方法也可用于支持临床决策,因为它可以精确定位与预测相关的单个组织。
Predicting clinical endpoints and visual changes with quality-weighted tissue-based renal histological features
Two common obstacles limiting the performance of data-driven algorithms in digital histopathology classification tasks are the lack of expert annotations and the narrow diversity of datasets. Multi-instance learning (MIL) can address the former challenge for the analysis of whole slide images (WSI), but performance is often inferior to full supervision. We show that the inclusion of weak annotations can significantly enhance the effectiveness of MIL while keeping the approach scalable. An analysis framework was developed to process periodic acid-Schiff (PAS) and Sirius Red (SR) slides of renal biopsies. The workflow segments tissues into coarse tissue classes. Handcrafted and deep features were extracted from these tissues and combined using a soft attention model to predict several slide-level labels: delayed graft function (DGF), acute tubular injury (ATI), and Remuzzi grade components. A tissue segmentation quality metric was also developed to reduce the adverse impact of poorly segmented instances. The soft attention model was trained using 5-fold cross-validation on a mixed dataset and tested on the QUOD dataset containing n=373 PAS and n=195 SR biopsies. The average ROC-AUC over different prediction tasks was found to be 0.598±0.011, significantly higher than using only ResNet50 (0.545±0.012), only handcrafted features (0.542±0.011), and the baseline (0.532±0.012) of state-of-the-art performance. In conjunction with soft attention, weighting tissues by segmentation quality has led to further improvement (AUC=0.618±0.010). Using an intuitive visualisation scheme, we show that our approach may also be used to support clinical decision making as it allows pinpointing individual tissues relevant to the predictions.