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Automated Breast Cancer Detection and Classification Techniques – A survey

机译:自动乳腺癌检测和分类技术 - 调查

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Breast cancer (BC) is the world’s second leading cause of death for women. Because the cause of the disease is unknown, early detection and diagnosis are critical for BC control, as they can improve treatment success, save lives, and lower costs. Gene mutation, changes in size, and breast skin texture are indicators of BC. Symptoms must be carefully investigated to offer appropriate care to patients and an automatic prediction system that can classify tumors as benign or malignant is required. The majority of data generated in today’s internet world is collected on social media or healthcare websites. Using data mining (DM) techniques, symptoms can be extracted from this massive amount of data, which will be helpful in the identification and classification of BC. The main contributions in this study are to investigate major problems that faces BC diagnosis and classification methods, as well as to present an overview of recent research studies that used to identify and classify BC.
机译:乳腺癌(BC)是世界第二次妇女死亡原因。 由于疾病的原因未知,早期检测和诊断对于BC控制至关重要,因为它们可以改善治疗成功,拯救生命,降低成本。 基因突变,大小的变化和乳房皮肤纹理是BC的指标。 必须仔细调查症状,为患者提供适当的护理和一种可以将肿瘤视为良性或恶性的自动预测系统。 在今天的互联网世界中产生的大多数数据都在社交媒体或医疗保健网站上收集。 使用数据挖掘(DM)技术,可以从这种大量数据中提取症状,这将有助于BC的识别和分类。 本研究的主要贡献是调查面临BC诊断和分类方法的重大问题,以及概述最近的研究研究,用于识别和分类BC。

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