Radiomics and machine learning applications in rectal cancer: Current update and future perspectives

无线电技术 医学 人工智能 计算机科学 机器学习 结直肠癌 电流(流体) 医学物理学 癌症 内科学 工程类 电气工程
作者
Arnaldo Stanzione,Francesco Verde,Valeria Romeo,Francesca Boccadifuoco,Pier Paolo Mainenti,Simone Maurea
出处
期刊:World Journal of Gastroenterology [Baishideng Publishing Group Co]
卷期号:27 (32): 5306-5321 被引量:73
标识
DOI:10.3748/wjg.v27.i32.5306
摘要

The high incidence of rectal cancer in both sexes makes it one of the most common tumors, with significant morbidity and mortality rates. To define the best treatment option and optimize patient outcome, several rectal cancer biological variables must be evaluated. Currently, medical imaging plays a crucial role in the characterization of this disease, and it often requires a multimodal approach. Magnetic resonance imaging is the first-choice imaging modality for local staging and restaging and can be used to detect high-risk prognostic factors. Computed tomography is widely adopted for the detection of distant metastases. However, conventional imaging has recognized limitations, and many rectal cancer characteristics remain assessable only after surgery and histopathology evaluation. There is a growing interest in artificial intelligence applications in medicine, and imaging is by no means an exception. The introduction of radiomics, which allows the extraction of quantitative features that reflect tumor heterogeneity, allows the mining of data in medical images and paved the way for the identification of potential new imaging biomarkers. To manage such a huge amount of data, the use of machine learning algorithms has been proposed. Indeed, without prior explicit programming, they can be employed to build prediction models to support clinical decision making. In this review, current applications and future perspectives of artificial intelligence in medical imaging of rectal cancer are presented, with an imaging modality-based approach and a keen eye on unsolved issues. The results are promising, but the road ahead for translation in clinical practice is rather long.
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