Department of Echocardiography, The Third Affiliated Hospital of Soochow University, Chang Zhou City, Jiangsu Province, China.
Department of General Surgery, The Third Affiliated Hospital of Soochow University, Chang Zhou City, Jiangsu Province, China.
Surg Infect (Larchmt). 2022 Dec;23(10):908-916. doi: 10.1089/sur.2022.223. Epub 2022 Nov 14.
To construct a prediction model based on the clinical characteristics of epidermoid cysts to identify pathologic infections, evaluate the diagnostic accuracy of the model, and conduct preliminary verification. We conducted a retrospective analysis of 314 patients diagnosed with epidermoid cysts that had been removed surgically. The clinical and pathologic data of all patients were collected. The patients were divided randomly into modeling group and verification group in a 75:25 ratio. In the modeling group, the multifactor logistic regression method was used to construct a prediction model for identifying epidermoid cyst pathologic infection, and the receiver operating characteristic (ROC) curve was used to evaluate the diagnostic accuracy of the model, which was then validated in the verification group. All 314 patients with epidermoid cysts were divided into non-infected group (183 cases) and infected group (131 cases) according to the pathologic results. Logistic regression analysis showed that the disease course, growth trend, redness, and texture of epidermoid cysts were independent factors affecting pathologic infection. The above four indicators were selected to construct the prediction model of epidermoid cyst pathologic infection. In the modeling group, the prediction model showed an area under the curve (AUC) of 0.898, with the sensitivity of 0.830, specificity of 0.890, positive likelihood ratio of 7.523, and negative likelihood ratio of 0.191. The AUC of the prediction model in the verification group was 0.919, which was not significantly different from that of the modeling group (p = 0.886). The prediction model based on the clinical characteristics of epidermoid cysts had good diagnostic accuracy and high specificity; it can be used to identify pathologic infections of epidermoid cysts.
构建基于表皮样囊肿临床特征的预测模型以识别病理感染,评估模型的诊断准确性,并进行初步验证。我们回顾性分析了 314 例经手术切除的表皮样囊肿患者。收集所有患者的临床和病理数据。将患者按照 75:25 的比例随机分为建模组和验证组。在建模组中,使用多因素逻辑回归方法构建用于识别表皮样囊肿病理感染的预测模型,并使用接收者操作特征(ROC)曲线评估模型的诊断准确性,然后在验证组中进行验证。根据病理结果,将 314 例表皮样囊肿患者分为非感染组(183 例)和感染组(131 例)。Logistic 回归分析显示,表皮样囊肿的病程、生长趋势、红肿和质地是影响病理感染的独立因素。选择以上四个指标构建表皮样囊肿病理感染预测模型。在建模组中,预测模型的曲线下面积(AUC)为 0.898,灵敏度为 0.830,特异度为 0.890,阳性似然比为 7.523,阴性似然比为 0.191。验证组预测模型的 AUC 为 0.919,与建模组无显著差异(p=0.886)。基于表皮样囊肿临床特征的预测模型具有良好的诊断准确性和高特异性;可用于识别表皮样囊肿的病理感染。