Yang Yan, Tu Haibin, Lin Youguo, Wei Jianting
Preventive Treatment of Disease in Traditional Chinese Medicine, The Affiliated People's Hospital of Fujian University of Traditional Chinese Medicine, Fuzhou, Fujian, China.
Department of Ultrasound, Mengchao Hepatobiliary Hospital of Fujian Medical University, Fuzhou, Fujian, China.
Medicine (Baltimore). 2025 Sep 12;104(37):e44371. doi: 10.1097/MD.0000000000044371.
Differentiating benign from malignant gallbladder polyps (GBPs) is critical for clinical decisions. Pathological biopsy, the gold standard, requires cholecystectomy, underscoring the need for noninvasive alternatives. This retrospective study included 202 patients (50 malignant, 152 benign) who underwent cholecystectomy (2018-2024) at Fujian Provincial Hospital. Ultrasound features (polyp diameter, stalk presence), serological markers (neutrophil-to-lymphocyte ratio [NLR], CA19-9), and demographics (age, sex, body mass index, waist-to-hip ratio, comorbidities, alcohol history) were analyzed. Patients were split into training (70%) and validation (30%) sets. Ten machine learning (ML) algorithms were trained; the model with the highest area under the receiver operating characteristic curve (AUC) was selected. Shapley additive explanations (SHAP) identified key predictors. Models were categorized as clinical (ultrasound + age), hematological (NLR + CA19-9), and combined (all 5 variables). ROC, precision-recall, calibration, and decision curve analysis curves were generated. A web-based calculator was developed. The Extra Trees model achieved the highest AUC (0.97 in training, 0.93 in validation). SHAP analysis highlighted polyp diameter, sessile morphology, NLR, age, and CA19-9 as top predictors. The combined model outperformed clinical (AUC 0.89) and hematological (AUC 0.68) models, with balanced sensitivity (66%-54%), specificity (94-93%), and accuracy (87%-83%). This ML model integrating ultrasound and serological markers accurately predicts GBP malignancy. The web-based calculator facilitates clinical adoption, potentially reducing unnecessary surgeries.
鉴别胆囊息肉(GBP)的良恶性对于临床决策至关重要。病理活检作为金标准,需要进行胆囊切除术,这凸显了对非侵入性替代方法的需求。这项回顾性研究纳入了202例在福建省立医院接受胆囊切除术(2018 - 2024年)的患者(50例恶性,152例良性)。分析了超声特征(息肉直径、有无蒂)、血清学标志物(中性粒细胞与淋巴细胞比值[NLR]、CA19 - 9)以及人口统计学特征(年龄、性别、体重指数、腰臀比、合并症、饮酒史)。患者被分为训练集(70%)和验证集(30%)。训练了十种机器学习(ML)算法;选择了在受试者操作特征曲线(AUC)下面积最高的模型。Shapley相加解释(SHAP)确定了关键预测因素。模型分为临床模型(超声 + 年龄)、血液学模型(NLR + CA19 - 9)和联合模型(所有五个变量)。生成了ROC、精确召回率、校准和决策曲线分析曲线。开发了一个基于网络的计算器。Extra Trees模型的AUC最高(训练集为0.97,验证集为0.93)。SHAP分析突出显示息肉直径、无蒂形态、NLR、年龄和CA19 - 9是主要预测因素。联合模型优于临床模型(AUC 0.89)和血液学模型(AUC 0.68),具有平衡的敏感性(66% - 54%)、特异性(94 - 93%)和准确性(87% - 83%)。这种整合超声和血清学标志物的ML模型能够准确预测GBP的恶性程度。基于网络的计算器便于临床应用,可能减少不必要的手术。