Sun Yang, Zhang Li, Huang Jian-Qiu, Su Jing, Cui Li-Gang
Department of Ultrasound, Peking University Third Hospital, Beijing, China.
Department of Pathology, School of Basic Medical Science, Peking University Health Science Center, Beijing, China.
Heliyon. 2024 Sep 6;10(17):e37580. doi: 10.1016/j.heliyon.2024.e37580. eCollection 2024 Sep 15.
This study aimed to verify whether pancreatic steatosis (PS) is an independent risk factor for type 2 diabetes mellitus (T2DM). We also developed and validated a deep learning model for the diagnosis of PS using ultrasonography (US) images based on histological classifications.
In this retrospective study, we analysed data from 139 patients who underwent US imaging of the pancreas followed by pancreatic resection at our medical institution. Logistic regression analysis was employed to ascertain the independent predictors of T2DM. The diagnostic efficacy of the deep learning model for PS was assessed using receiver operating characteristic curve analysis and compared with traditional visual assessment methodology in US imaging.
The incidence rate of PS in the study cohort was 64.7 %. Logistic regression analysis revealed that age (P = 0.003) and the presence of PS (P = 0.048) were independent factors associated with T2DM. The deep learning model demonstrated robust diagnostic capabilities for PS, with areas under the curve of 0.901 and 0.837, sensitivities of 0.895 and 0.920, specificities of 0.700 and 0.765, accuracies of 0.814 and 0.857, and F1-scores of 0.850 and 0.885 for the training and validation cohorts, respectively. These metrics significantly outperformed those of conventional US imaging (P < 0.001 and P = 0.045, respectively).
The deep learning model significantly enhanced the diagnostic accuracy of conventional ultrasound for PS detection. Its high sensitivity could facilitate widespread screening for PS in large populations, aiding in the early identification of individuals at an elevated risk for T2DM in routine clinical practice.
本研究旨在验证胰腺脂肪变性(PS)是否为2型糖尿病(T2DM)的独立危险因素。我们还开发并验证了一种基于组织学分类,利用超声(US)图像诊断PS的深度学习模型。
在这项回顾性研究中,我们分析了139例在我院接受胰腺超声成像检查并随后进行胰腺切除术患者的数据。采用逻辑回归分析确定T2DM的独立预测因素。使用受试者工作特征曲线分析评估深度学习模型对PS的诊断效能,并与US成像中的传统视觉评估方法进行比较。
研究队列中PS的发生率为64.7%。逻辑回归分析显示,年龄(P = 0.003)和PS的存在(P = 0.048)是与T2DM相关的独立因素。深度学习模型对PS表现出强大的诊断能力,训练队列和验证队列的曲线下面积分别为0.901和0.837,敏感度分别为0.895和0.920,特异度分别为0.700和0.765,准确率分别为0.814和0.857,F1分数分别为0.850和0.885。这些指标显著优于传统US成像(分别为P < 0.001和P = 0.045)。
深度学习模型显著提高了传统超声检测PS的诊断准确性。其高敏感度有助于在大人群中广泛筛查PS,有助于在常规临床实践中早期识别T2DM高危个体。