Nagarkar Dilip B, Mercan Ezgi, Weaver Donald L, Brunyé Tad T, Carney Patricia A, Rendi Mara H, Beck Andrew H, Frederick Paul D, Shapiro Linda G, Elmore Joann G
Department of Medicine, University of Washington School of Medicine, Seattle, WA, USA.
Department of Computer Science and Engineering, University of Washington, Seattle, WA, USA.
Mod Pathol. 2016 Sep;29(9):1004-11. doi: 10.1038/modpathol.2016.85. Epub 2016 May 20.
A pathologist's accurate interpretation relies on identifying relevant histopathological features. Little is known about the precise relationship between feature identification and diagnostic decision making. We hypothesized that greater overlap between a pathologist's selected diagnostic region of interest (ROI) and a consensus derived ROI is associated with higher diagnostic accuracy. We developed breast biopsy test cases that included atypical ductal hyperplasia (n=80); ductal carcinoma in situ (n=78); and invasive breast cancer (n=22). Benign cases were excluded due to the absence of specific abnormalities. Three experienced breast pathologists conducted an independent review of the 180 digital whole slide images, established a reference consensus diagnosis and marked one or more diagnostic ROIs for each case. Forty-four participating pathologists independently diagnosed and marked ROIs on the images. Participant diagnoses and ROI were compared with consensus reference diagnoses and ROI. Regression models tested whether percent overlap between participant ROI and consensus reference ROI predicted diagnostic accuracy. Each of the 44 participants interpreted 39-50 cases for a total of 1972 individual diagnoses. Percent ROI overlap with the expert reference ROI was higher in pathologists who self-reported academic affiliation (69 vs 65%, P=0.002). Percent overlap between participants' ROI and consensus reference ROI was then classified into ordinal categories: 0, 1-33, 34-65, 66-99 and 100% overlap. For each incremental change in the ordinal percent ROI overlap, diagnostic agreement increased by 60% (OR 1.6, 95% CI (1.5-1.7), P<0.001) and the association remained significant even after adjustment for other covariates. The magnitude of the association between ROI overlap and diagnostic agreement increased with increasing diagnostic severity. The findings indicate that pathologists are more likely to converge with an expert reference diagnosis when they identify an overlapping diagnostic image region, suggesting that future computer-aided detection systems that highlight potential diagnostic regions could be a helpful tool to improve accuracy and education.
病理学家的准确解读依赖于识别相关的组织病理学特征。关于特征识别与诊断决策之间的精确关系,我们知之甚少。我们假设病理学家选择的诊断感兴趣区域(ROI)与基于共识得出的ROI之间的重叠度越高,诊断准确性就越高。我们开发了乳腺活检测试病例,包括非典型导管增生(n = 80);导管原位癌(n = 78);以及浸润性乳腺癌(n = 22)。由于不存在特定异常,良性病例被排除在外。三位经验丰富的乳腺病理学家对180张数字全切片图像进行了独立审查,确立了参考共识诊断,并为每个病例标记了一个或多个诊断ROI。44位参与的病理学家在图像上独立进行诊断并标记ROI。将参与者的诊断和ROI与共识参考诊断和ROI进行比较。回归模型测试参与者ROI与共识参考ROI之间的重叠百分比是否能预测诊断准确性。44位参与者每人解读39 - 50个病例,总共进行了1972次个体诊断。自我报告有学术背景的病理学家的ROI与专家参考ROI的重叠百分比更高(69%对65%,P = 0.002)。然后将参与者ROI与共识参考ROI之间的重叠百分比分为有序类别:0、1 - 33%、34 - 65%、66 - 99%和100%重叠。对于有序ROI重叠百分比的每一次增量变化,诊断一致性提高60%(OR 1.6,95% CI(1.5 - 1.7),P < 0.001),即使在调整其他协变量后,这种关联仍然显著。ROI重叠与诊断一致性之间的关联强度随着诊断严重程度的增加而增加。研究结果表明,当病理学家识别出重叠的诊断图像区域时,他们更有可能与专家参考诊断趋于一致,这表明未来突出潜在诊断区域的计算机辅助检测系统可能是提高准确性和教育水平的有用工具。