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Identifying free-text features to improve automated classification of structured histopathology reports for feline small intestinal disease

机译:识别自由文本特征,以改善猫小肠疾病的结构化组织病理学报告的自动分类

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The histologic evaluation of gastrointestinal (GI) biopsies is the standard for diagnosis of a variety of GI diseases (e.g., inflammatory bowel disease [IBD] and alimentary lymphoma [ALA]). The World Small Animal Veterinary Association (WSAVA) Gastrointestinal International Standardization Group proposed a reporting standard for GI biopsies consisting of a defined set of microscopic features. We compared the machine classification accuracy of free-text microscopic findings with those represented in the WSAVA format with a diagnosis of IBD and ALA. Unstructured free-text duodenal biopsy pathology reports from cats ( n = 60) with a diagnosis of IBD ( n = 20), ALA ( n = 20), or normal ( n = 20) were identified. Biopsy samples from these cases were then scored following the WSAVA guidelines to create a set of structured reports. Three supervised machine-learning algorithms were trained using the structured and then the unstructured reports. Diagnosis classification accuracy for the 3 algorithms was compared using the structured and unstructured reports. Using naive Bayes and neural networks, unstructured information-based models achieved higher diagnostic accuracy (0.90 and 0.88, respectively) compared to the structured information-based models (0.74 and 0.72, respectively). Results suggest that discriminating diagnostic information was lost using current WSAVA microscopic guideline features. Addition of free-text features (number of plasma cells) increased WSAVA auto-classification performance. The methodologies reported in our study represent a way of identifying candidate microscopic features for use in structured histopathology reports.
机译:胃肠道(GI)活组织检查的组织学评估是诊断各种GI疾病的标准(例如,炎症性肠病[IBD]和AlaMatical淋巴瘤[ALA])。世界小型动物兽医协会(WSAVA)胃肠道国际标准化集团提出了GI活检的报告标准,包括一组定义的微观特征。我们将自由文本微观调查结果的机器分类准确性与WSAVA格式所代表的机器分类准确性与IBD和ALA的诊断进行了比较。鉴定了来自猫(n = 60)的猫(n = 60)的非结构化自由文本的活检病理学报告(n = 20),ALA(n = 20)或正常(n = 20)。然后在WSAVA指南下进行这些情况的活组织检查样本,以创建一组结构化报告。使用结构化,然后是非结构化报告进行培训三种监督的机器学习算法。使用结构化和非结构化报告进行比较3算法的诊断分类准确性。使用Naive Bayes和神经网络,与基于结构化信息的型号(分别为0.74和0.72)相比,基于非结构化的信息的模型分别实现了更高的诊断精度(分别为0.90和0.88)。结果表明,使用当前的WSAVA微观指南特征丢失鉴别诊断信息。添加自由文本特征(等离子体单元的数量)增加了WSAVA自动分类性能。我们研究报告的方法代表了一种识别用于结构化组织病理学报告的候选微观特征的方法。

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