Early cancer detection using deep learning and medical imaging: A survey

癌症 深度学习 学习迁移 人工智能 医学影像学 前列腺癌 乳腺癌 医学 计算机科学 医学物理学 机器学习 内科学
作者
Istiak Ahmad,Fahad Alqurashi
出处
期刊:Critical Reviews in Oncology Hematology [Elsevier]
卷期号:204: 104528-104528
标识
DOI:10.1016/j.critrevonc.2024.104528
摘要

Cancer, characterized by the uncontrolled division of abnormal cells that harm body tissues, necessitates early detection for effective treatment. Medical imaging is crucial for identifying various cancers, yet its manual interpretation by radiologists is often subjective, labour-intensive, and time-consuming. Consequently, there is a critical need for an automated decision-making process to enhance cancer detection and diagnosis. Previously, a lot of work was done on surveys of different cancer detection methods, and most of them were focused on specific cancers and limited techniques. This study presents a comprehensive survey of cancer detection methods. It entails a review of 99 research articles collected from the Web of Science, IEEE, and Scopus databases, published between 2020 and 2024. The scope of the study encompasses 12 types of cancer, including breast, cervical, ovarian, prostate, esophageal, liver, pancreatic, colon, lung, oral, brain, and skin cancers. This study discusses different cancer detection techniques, including medical imaging data, image preprocessing, segmentation, feature extraction, deep learning and transfer learning methods, and evaluation metrics. Eventually, we summarised the datasets and techniques with research challenges and limitations. Finally, we provide future directions for enhancing cancer detection techniques.

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