Jones Emily, Alawneh John, Thompson Mary, Palmieri Chiara, Jackson Karen, Allavena Rachel
School of Veterinary Science, The University of Queensland, Gatton, QLD 4343, Australia.
Good Clinical Practice Research Group, School of Veterinary Science, The University of Queensland, Gatton, QLD 4343, Australia.
Vet Sci. 2020 Nov 27;7(4):190. doi: 10.3390/vetsci7040190.
Anatomic pathology is a vital component of veterinary medicine but as a primarily subjective qualitative or semiquantitative discipline, it is at risk of cognitive biases. Logistic regression is a statistical technique used to explain relationships between data categories and outcomes and is increasingly being applied in medicine for predicting disease probability based on medical and patient variables. Our aims were to evaluate histologic features of canine and feline bladder diseases and explore the utility of logistic regression modeling in identifying associations in veterinary histopathology, then formulate a predictive disease model using urinary bladder as a pilot tissue. The histologic features of 267 canine and 71 feline bladder samples were evaluated, and a logistic regression model was developed to identify associations between the bladder disease diagnosed, and both patient and histologic variables. There were 102 cases of cystitis, 84 neoplasia, 42 urolithiasis and 63 normal bladders. Logistic regression modeling identified six variables that were significantly associated with disease outcome: species, urothelial ulceration, urothelial inflammation, submucosal lymphoid aggregates, neutrophilic submucosal inflammation, and moderate submucosal hemorrhage. This study demonstrated that logistic regression modeling could provide a more objective approach to veterinary histopathology and has opened the door toward predictive disease modeling based on histologic variables.
解剖病理学是兽医学的重要组成部分,但作为一门主要基于主观定性或半定量的学科,它存在认知偏差的风险。逻辑回归是一种用于解释数据类别与结果之间关系的统计技术,在医学领域越来越多地被用于根据医学和患者变量预测疾病概率。我们的目的是评估犬猫膀胱疾病的组织学特征,探讨逻辑回归模型在兽医组织病理学中识别关联的效用,然后以膀胱作为试点组织制定一个预测性疾病模型。我们评估了267份犬类和71份猫类膀胱样本的组织学特征,并开发了一个逻辑回归模型来识别诊断出的膀胱疾病与患者及组织学变量之间的关联。其中有102例膀胱炎、84例肿瘤、42例尿石症和63个正常膀胱。逻辑回归模型确定了六个与疾病结果显著相关的变量:物种、尿路上皮溃疡、尿路上皮炎症、黏膜下淋巴集结、嗜中性粒细胞性黏膜下炎症和中度黏膜下出血。这项研究表明,逻辑回归模型可为兽医组织病理学提供一种更客观的方法,并为基于组织学变量的预测性疾病模型打开了大门。