首页> 外文期刊>Korean journal of radiology : >Ultrasound Feature-Based Diagnostic Model Focusing on the “Submarine Sign” for Epidermal Cysts among Superficial Soft Tissue Lesions
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Ultrasound Feature-Based Diagnostic Model Focusing on the “Submarine Sign” for Epidermal Cysts among Superficial Soft Tissue Lesions

机译:基于超声特征的浅表软组织病变中表皮囊肿的“潜艇体征”诊断模型

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Objective To develop a diagnostic model for superficial soft tissue lesions to differentiate epidermal cyst (EC) from other lesions based on ultrasound (US) features. Materials and Methods This retrospective study included 205 patients who had undergone US examinations for superficial soft tissue lesions and subsequent surgical excision. The study population was divided into the derivation set (n = 112) and validation set (n = 93) according to the imaging date. The following US features were analyzed to determine those that could discriminate EC from other lesions: more-than-half-depth involvement of the dermal layer, “submarine sign” (focal projection of the hypoechoic portion to the epidermis), posterior acoustic enhancement, posterior wall enhancement, morphology, shape, echogenicity, vascularity, and perilesional fat change. Using multivariable logistic regression, a diagnostic model was constructed and visualized as a nomogram. The performance of the diagnostic model was assessed by calculating the area under the curve (AUC) of the receiver operating characteristic curve and calibration plot in both the derivation and validation sets. Results More-than-half-depth involvement of the dermal layer (odds ratio [OR] = 3.35; p = 0.051), “submarine sign” (OR = 12.2; p 0.001), and morphology (OR = 5.44; p = 0.002) were features that outweighed the others when diagnosing EC. The diagnostic model based on these features showed good discrimination ability in both the derivation set (AUC = 0.888, 95% confidence interval [95% CI] = 0.825–0.950) and validation set (AUC = 0.902, 95% CI = 0.832–0.972). Conclusion More-than-half-depth of involvement of the dermal layer, “submarine sign,” and morphology are relatively better US features than the others for diagnosing EC.
机译:目的建立浅表软组织病变的诊断模型,以基于超声(US)特征将表皮囊肿(EC)与其他病变区分开。材料和方法这项回顾性研究包括205例接受过US检查的浅表软组织病变和随后的手术切除的患者。根据成像日期将研究人群分为衍生集(n = 112)和验证集(n = 93)。对以下美国特征进行了分析,以确定可以将EC与其他病变区分开的特征:真皮层受累深度超过一半,“海底征象”(低回声部分向表皮的局部投影),后声增强,后壁增强,形态,形状,回声性,血管性和病灶周围脂肪变化。使用多变量logistic回归,可以构建诊断模型并将其可视化为列线图。通过计算派生集和验证集中的接收器工作特性曲线的曲线下面积(AUC)和校准图,可以评估诊断模型的性能。结果真皮层受累程度超过一半(奇数比[OR] = 3.35; p = 0.051),“海底信号”(OR = 12.2; p <0.001)和形态(OR = 5.44; p = 0.002)是诊断EC时胜过其他功能的功能。基于这些特征的诊断模型在派生集(AUC = 0.888,95%置信区间[95%CI] = 0.825–0.950)和验证集(AUC = 0.902,95%CI = 0.832–0.972)中均显示出良好的区分能力)。结论真皮层受累,“海底征兆”和形态学的深度超过半数,在诊断EC方面比其他特征要好。

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