Machine learning and new insights for breast cancer diagnosis.

Ya Guo, Heng Zhang, Leilei Yuan, Weidong Chen, Haibo Zhao, Qing-Qing Yu, Wenjie Shi
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Abstract

Breast cancer (BC) is the most prominent form of cancer among females all over the world. The current methods of BC detection include X-ray mammography, ultrasound, computed tomography, magnetic resonance imaging, positron emission tomography and breast thermographic techniques. More recently, machine learning (ML) tools have been increasingly employed in diagnostic medicine for its high efficiency in detection and intervention. The subsequent imaging features and mathematical analyses can then be used to generate ML models, which stratify, differentiate and detect benign and malignant breast lesions. Given its marked advantages, radiomics is a frequently used tool in recent research and clinics. Artificial neural networks and deep learning (DL) are novel forms of ML that evaluate data using computer simulation of the human brain. DL directly processes unstructured information, such as images, sounds and language, and performs precise clinical image stratification, medical record analyses and tumour diagnosis. Herein, this review thoroughly summarizes prior investigations on the application of medical images for the detection and intervention of BC using radiomics, namely DL and ML. The aim was to provide guidance to scientists regarding the use of artificial intelligence and ML in research and the clinic.
机器学习和乳腺癌诊断新见解。
乳腺癌(BC)是全世界女性最常见的癌症。目前检测乳腺癌的方法包括 X 射线乳房 X 线照相术、超声波、计算机断层扫描、磁共振成像、正电子发射断层扫描和乳房热成像技术。最近,机器学习(ML)工具因其在检测和干预方面的高效率而被越来越多地应用于诊断医学中。随后的成像特征和数学分析可用于生成 ML 模型,对乳腺良性和恶性病变进行分层、区分和检测。鉴于其明显的优势,放射组学是近年来研究和临床中经常使用的工具。人工神经网络和深度学习(DL)是利用计算机模拟人脑对数据进行评估的新型 ML。深度学习可直接处理图像、声音和语言等非结构化信息,并进行精确的临床图像分层、病历分析和肿瘤诊断。在此,本综述全面总结了之前利用放射组学(即 DL 和 ML)将医学影像应用于检测和干预 BC 的研究。目的是为科学家在研究和临床中使用人工智能和ML提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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