Mahsa Arab MSc, Ali Fallah PhD, Saeid Rashidi PhD, Maryam Mehdizadeh Dastjerdi PhD, Nasrin Ahmadinejad MD
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The dataset, named RFTSBU, was registered by a SuperSonic Imagine Aixplorer medical/research system equipped with a linear transducer. The regions of interest (ROIs) of the B-mode images were manually selected by an expert radiologist before computing the suggested features. Regarding time, frequency, and time-frequency domains, 291 various features were extracted from each ROI. Finally, the features were classified by a pioneering technique named the reference classification method (RCM). Furthermore, the Lee filter was applied to evaluate the effectiveness of reducing speckle noise on the outcomes.</p>\n </section>\n \n <section>\n \n <h3> Results</h3>\n \n <p>The accuracy of two-class, three-class, and four-class classifications were respectively calculated 98.59 ± 0.71%, 98.13 ± 0.69%, and 96.10 ± 0.66% (considering 10 repetitions) while support vector machine (SVM) and K-nearest neighbor (KNN) classifiers with 5-fold cross-validation were utilized.</p>\n </section>\n \n <section>\n \n <h3> Conclusions</h3>\n \n <p>This article represented the proposed approach, named CCRFML, to distinguish between breast lesions based on registered in vivo RF time series employing an ML framework. The proposed method's impressive level of classification accuracy attests to its capability of effectively assisting medical professionals in the noninvasive differentiation of breast lesions.</p>\n </section>\n </div>","PeriodicalId":17563,"journal":{"name":"Journal of Ultrasound in Medicine","volume":"43 11","pages":"2129-2145"},"PeriodicalIF":2.1000,"publicationDate":"2024-08-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Computer-Aided Classification of Breast Lesions Based on US RF Time Series Using a Novel Machine Learning Approach\",\"authors\":\"Mahsa Arab MSc, Ali Fallah PhD, Saeid Rashidi PhD, Maryam Mehdizadeh Dastjerdi PhD, Nasrin Ahmadinejad MD\",\"doi\":\"10.1002/jum.16542\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div>\\n \\n <section>\\n \\n <h3> Objectives</h3>\\n \\n <p>One of the most promising adjuncts for screening breast cancer is ultrasound (US) radio-frequency (RF) time series. 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引用次数: 0
摘要
目的:超声波(US)射频(RF)时间序列是筛查乳腺癌最有前途的辅助方法之一。与其他方法相比,它具有无需任何辅助设备的优越性。本研究旨在提出一种机器学习(ML)方法,根据从累积的 US 射频时间序列中提取的特征自动对良性、可能良性、可疑和恶性乳腺病变进行分类:本文分析了 118 名患者的 220 个上述类别的数据。数据集被命名为 RFTSBU,由配备线性传感器的 SuperSonic Imagine Aixplorer 医疗/研究系统登记。在计算所建议的特征之前,B 型图像的感兴趣区(ROI)由放射科专家手动选定。在时域、频域和时频域方面,从每个 ROI 提取了 291 个不同的特征。最后,采用一种名为 "参考分类法(RCM)"的开创性技术对这些特征进行分类。此外,还应用了李氏滤波器来评估减少斑点噪声对结果的影响:结果:利用支持向量机(SVM)和 K 近邻(KNN)分类器进行 5 倍交叉验证,计算出两类、三类和四类分类的准确率分别为 98.59 ± 0.71%、98.13 ± 0.69% 和 96.10 ± 0.66%(考虑到 10 次重复):本文介绍了所提出的一种名为 CCRFML 的方法,该方法采用 ML 框架,根据登记的活体射频时间序列区分乳腺病变。该方法的分类准确率令人印象深刻,证明了它能有效地帮助医疗专业人员对乳腺病变进行无创区分。
Computer-Aided Classification of Breast Lesions Based on US RF Time Series Using a Novel Machine Learning Approach
Objectives
One of the most promising adjuncts for screening breast cancer is ultrasound (US) radio-frequency (RF) time series. It has the superiority of not requiring any supplementary equipment over other methods. This research aimed to propound a machine learning (ML) approach for automatically classifying benign, probably benign, suspicious, and malignant breast lesions based on the features extracted from the accumulated US RF time series.
Methods
In this article, 220 data of the aforementioned categories, recorded from 118 patients, were analyzed. The dataset, named RFTSBU, was registered by a SuperSonic Imagine Aixplorer medical/research system equipped with a linear transducer. The regions of interest (ROIs) of the B-mode images were manually selected by an expert radiologist before computing the suggested features. Regarding time, frequency, and time-frequency domains, 291 various features were extracted from each ROI. Finally, the features were classified by a pioneering technique named the reference classification method (RCM). Furthermore, the Lee filter was applied to evaluate the effectiveness of reducing speckle noise on the outcomes.
Results
The accuracy of two-class, three-class, and four-class classifications were respectively calculated 98.59 ± 0.71%, 98.13 ± 0.69%, and 96.10 ± 0.66% (considering 10 repetitions) while support vector machine (SVM) and K-nearest neighbor (KNN) classifiers with 5-fold cross-validation were utilized.
Conclusions
This article represented the proposed approach, named CCRFML, to distinguish between breast lesions based on registered in vivo RF time series employing an ML framework. The proposed method's impressive level of classification accuracy attests to its capability of effectively assisting medical professionals in the noninvasive differentiation of breast lesions.
期刊介绍:
The Journal of Ultrasound in Medicine (JUM) is dedicated to the rapid, accurate publication of original articles dealing with all aspects of medical ultrasound, particularly its direct application to patient care but also relevant basic science, advances in instrumentation, and biological effects. The journal is an official publication of the American Institute of Ultrasound in Medicine and publishes articles in a variety of categories, including Original Research papers, Review Articles, Pictorial Essays, Technical Innovations, Case Series, Letters to the Editor, and more, from an international bevy of countries in a continual effort to showcase and promote advances in the ultrasound community.
Represented through these efforts are a wide variety of disciplines of ultrasound, including, but not limited to:
-Basic Science-
Breast Ultrasound-
Contrast-Enhanced Ultrasound-
Dermatology-
Echocardiography-
Elastography-
Emergency Medicine-
Fetal Echocardiography-
Gastrointestinal Ultrasound-
General and Abdominal Ultrasound-
Genitourinary Ultrasound-
Gynecologic Ultrasound-
Head and Neck Ultrasound-
High Frequency Clinical and Preclinical Imaging-
Interventional-Intraoperative Ultrasound-
Musculoskeletal Ultrasound-
Neurosonology-
Obstetric Ultrasound-
Ophthalmologic Ultrasound-
Pediatric Ultrasound-
Point-of-Care Ultrasound-
Public Policy-
Superficial Structures-
Therapeutic Ultrasound-
Ultrasound Education-
Ultrasound in Global Health-
Urologic Ultrasound-
Vascular Ultrasound