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应用放射组学和超声机器学习对子宫肌肿瘤进行鉴别诊断(ADMIRAL 初步研究)。放射组学与子宫肌肿瘤的鉴别诊断。

Using rADioMIcs and machine learning with ultrasonography for the differential diagnosis of myometRiAL tumors (the ADMIRAL pilot study). Radiomics and differential diagnosis of myometrial tumors.

机构信息

Gynecologic Oncology, Fondazione IRCCS Istituto Nazionale Tumori di Milano, Italy.

DeepTrace Technologies S.R.L., Milan, Italy.

出版信息

Gynecol Oncol. 2021 Jun;161(3):838-844. doi: 10.1016/j.ygyno.2021.04.004. Epub 2021 Apr 16.

Abstract

OBJECTIVE

To develop and evaluate the performance of a radiomics and machine learning model applied to ultrasound (US) images in predicting the risk of malignancy of a uterine mesenchymal lesion.

METHODS

Single-center retrospective evaluation of consecutive patients who underwent surgery for a malignant uterine mesenchymal lesion (sarcoma) and a control group of patients operated on for a benign uterine mesenchymal lesion (myoma). Radiomics was applied to US preoperative images according to the International Biomarker Standardization Initiative guidelines to create, validate and test a classification model for the differential diagnosis of myometrial tumors. The TRACE4 radiomic platform was used thus obtaining a full-automatic radiomic workflow. Definitive histology was considered as gold standard. Accuracy, sensitivity, specificity, AUC and standard deviation of the created classification model were defined.

RESULTS

A total of 70 women with uterine mesenchymal lesions were recruited (20 with histological diagnosis of sarcoma and 50 myomas). Three hundred and nineteen radiomics IBSI-compliant features were extracted and 308 radiomics features were found stable. Different machine learning classifiers were created and the best classification system showed Accuracy 0.85 ± 0.01, Sensitivity 0.80 ± 0.01, Specificity 0.87 ± 0.01, AUC 0.86 ± 0.03.

CONCLUSIONS

Radiomics applied to US images shows a great potential in differential diagnosis of mesenchymal tumors, thus representing an interesting decision support tool for the gynecologist oncologist in an area often characterized by uncertainty.

摘要

目的

开发和评估应用于超声(US)图像的放射组学和机器学习模型在预测子宫间质性病变恶性风险方面的性能。

方法

对连续接受手术治疗的恶性子宫间质性病变(肉瘤)患者和接受良性子宫间质性病变(肌瘤)手术治疗的对照组患者进行单中心回顾性评估。根据国际生物标志物标准化倡议指南,对 US 术前图像进行放射组学分析,以创建、验证和测试用于鉴别肌层肿瘤的分类模型。使用 TRACE4 放射组学平台,从而获得全自动化的放射组学工作流程。明确的组织学被认为是金标准。定义了所创建分类模型的准确性、灵敏度、特异性、AUC 和标准差。

结果

共招募了 70 名患有子宫间质性病变的女性(20 名组织学诊断为肉瘤,50 名肌瘤)。提取了 319 个符合 IBSI 标准的放射组学特征,发现 308 个放射组学特征稳定。创建了不同的机器学习分类器,最佳分类系统的准确性为 0.85 ± 0.01,灵敏度为 0.80 ± 0.01,特异性为 0.87 ± 0.01,AUC 为 0.86 ± 0.03。

结论

放射组学应用于 US 图像在间质肿瘤的鉴别诊断中具有很大的潜力,因此代表了妇科肿瘤学家在经常存在不确定性的领域中的一个有趣的决策支持工具。

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