A diagnostic test of two-dimensional ultrasonic feature extraction based on artificial intelligence combined with blood flow Adler classification and contrast-enhanced ultrasound for predicting HER-2-positive breast cancer.

IF 1.5 4区 医学 Q4 ONCOLOGY
Translational cancer research Pub Date : 2025-01-31 Epub Date: 2025-01-21 DOI:10.21037/tcr-24-2182
Kun Wang, Xi Yang, Shuo Yang, Xian Du, Ruijing Shi, Wendong Bai, Yu Wang
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引用次数: 0

Abstract

Background: Human epidermal growth factor receptor 2 (HER-2) was an important driver gene for breast cancer which had high degree of malignancy and poor prognosis. Ultrasonography was an important imaging method for the diagnosis of breast cancer, but its diagnostic efficacy of HER-2-positive breast cancer was not satisfactory. To assess the predictive value of two-dimensional ultrasonic feature extraction based on artificial intelligence (AI) combined with blood flow Adler classification and contrast-enhanced ultrasound (CEUS) for HER-2-positive breast cancer, we compared the value of the area under the receiver operating characteristic (ROC) curve (AUC) of the combined diagnosis model and single-factor models.

Methods: A retrospective analysis was performed on 140 patients (88 HER-2-positive and 52 HER-2-negative). These patients were divided into internal test samples and external validation samples in a ratio of 7:3 randomly. The two samples were divided into HER-2-positive group and HER-2-negative group. All the patients were examined by two-dimensional ultrasound, color Doppler ultrasound, and CEUS, and AI was used to extract two-dimensional ultrasonic image features. Features of two-dimensional ultrasound included not parallel to the skin, irregular shape, unclear boundary, posterior echo attenuated, solid or cystic-solid mixed, microcalcification or coarse calcification were treated as HER-2-positive. Levels of Doppler ultrasound included level 3 and level 4 were treated as HER-2-positive. Features of CEUS included high enhancement, fast forward, centrifugal or diffuse, uneven, lesion range increased after CEUS, with perforating branches, unclear nodule boundary after CEUS were treated as HER-2-positive. The ultrasonography characteristics in different ultrasonography methods were analyzed, the parameters with statistically significant differences between groups of internal test samples were incorporated to establish a joint diagnosis model. The sensitivity, specificity and accuracy of the combined diagnosis model and single-factor models were calculated, the ROC curve was drawn to evaluate the diagnostic efficacy of the combined diagnosis model.

Results: Long diameter direction, Adler grade of blood flow, contrast agent distribution characteristics, and nodule boundary after CEUS were statistically significant different between the positive and negative groups in internal test and external validation samples (P<0.05). The sensitivity, specificity, accuracy of the combined diagnosis model were significantly higher than single-parameter diagnosis method both in internal test and external validation samples, and the kappa values of combined diagnosis model were highest. The AUC of the combined diagnosis model of internal test and external validation samples was 0.861 and 0.969, which was significantly higher (P<0.05) than that in the long diameter direction (0.717 and 0.732), blood flow Adler grade (0.674 and 0.786), CEUS distribution characteristics (0.666 and 0.750), and the nodule boundary after CEUS (0.684 and 0.786).

Conclusions: The combined diagnosis model based on two-dimensional ultrasonic feature extraction, blood flow, and CEUS can effectively predict the expression of HER-2 in breast cancer.

基于人工智能的二维超声特征提取结合血流Adler分类和超声造影增强预测her -2阳性乳腺癌的诊断试验
背景:人表皮生长因子受体2 (HER-2)是乳腺癌恶性程度高、预后差的重要驱动基因。超声检查是诊断乳腺癌的重要影像学手段,但其对her -2阳性乳腺癌的诊断效果并不理想。为了评估基于人工智能(AI)结合血流Adler分类和造影增强超声(CEUS)的二维超声特征提取对her -2阳性乳腺癌的预测价值,我们比较了联合诊断模型和单因素模型的受试者工作特征(ROC)曲线下面积(AUC)的值。方法:对140例患者进行回顾性分析,其中her -2阳性88例,her -2阴性52例。将这些患者随机分为内部测试样本和外部验证样本,比例为7:3。将2个样本分为her -2阳性组和her -2阴性组。所有患者均行二维超声、彩色多普勒超声、超声造影检查,利用人工智能提取二维超声图像特征。二维超声表现为与皮肤不平行、形状不规则、边界不清、后回声减弱、实性或囊性-实性混合、微钙化或粗钙化均视为her -2阳性。多普勒超声3级和4级均为her -2阳性。超声造影表现为高增强、快进、离心或弥漫性、不均匀,超声造影后病变范围增大,有穿支,结节边界不清,视为her -2阳性。分析不同超声检查方法的超声特征,将内测样本组间差异有统计学意义的参数纳入,建立联合诊断模型。计算联合诊断模型与单因素模型的敏感性、特异性和准确性,绘制ROC曲线评价联合诊断模型的诊断效果。结果:内测和外验证样本超声造影后长径方向、血流Adler分级、造影剂分布特征、结节边界在阳性组和阴性组间差异均有统计学意义(p)结论:基于二维超声特征提取、血流、超声造影的联合诊断模型可有效预测HER-2在乳腺癌中的表达。
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
252
期刊介绍: Translational Cancer Research (Transl Cancer Res TCR; Print ISSN: 2218-676X; Online ISSN 2219-6803; http://tcr.amegroups.com/) is an Open Access, peer-reviewed journal, indexed in Science Citation Index Expanded (SCIE). TCR publishes laboratory studies of novel therapeutic interventions as well as clinical trials which evaluate new treatment paradigms for cancer; results of novel research investigations which bridge the laboratory and clinical settings including risk assessment, cellular and molecular characterization, prevention, detection, diagnosis and treatment of human cancers with the overall goal of improving the clinical care of cancer patients. The focus of TCR is original, peer-reviewed, science-based research that successfully advances clinical medicine toward the goal of improving patients'' quality of life. The editors and an international advisory group of scientists and clinician-scientists as well as other experts will hold TCR articles to the high-quality standards. We accept Original Articles as well as Review Articles, Editorials and Brief Articles.
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