放射组学和放射基因组学:从医学图像中提取更多信息,用于卵巢癌的诊断和预后预测。

IF 16.7 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Song Zeng, Xin-Lu Wang, Hua Yang
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引用次数: 0

摘要

卵巢癌(OC)仍然是全球致死率最高的妇科恶性肿瘤之一。尽管在卵巢癌筛查中采用了各种医学成像方法,但由于图像表现的差异性,卵巢肿瘤的准确鉴别诊断仍然面临巨大挑战,导致缺乏客观性,这在很大程度上依赖于医疗专业人员的专业知识。放射组学的出现和发展可以解决这一难题,它可以从传统医学影像中高通量提取有价值的信息。此外,放射组学还可以与基因组学相结合,这是一种被称为放射基因组学的新方法,可以对肿瘤生物学特征进行更全面、精确和个性化的评估。在这篇综述中,我们广泛概述了放射组学和放射基因组学在诊断和预测卵巢肿瘤中的应用。研究结果表明,基于成像的人工智能方法可以准确区分良性和恶性卵巢肿瘤,并对其亚型进行分类。此外,这些方法还能有效预测卵巢癌患者的生存率、治疗效果、转移风险和复发率。预计这些进展将成为管理卵巢癌的决策支持工具,同时促进精准医学的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiomics and radiogenomics: extracting more information from medical images for the diagnosis and prognostic prediction of ovarian cancer.

Ovarian cancer (OC) remains one of the most lethal gynecological malignancies globally. Despite the implementation of various medical imaging approaches for OC screening, achieving accurate differential diagnosis of ovarian tumors continues to pose significant challenges due to variability in image performance, resulting in a lack of objectivity that relies heavily on the expertise of medical professionals. This challenge can be addressed through the emergence and advancement of radiomics, which enables high-throughput extraction of valuable information from conventional medical images. Furthermore, radiomics can integrate with genomics, a novel approach termed radiogenomics, which allows for a more comprehensive, precise, and personalized assessment of tumor biological features. In this review, we present an extensive overview of the application of radiomics and radiogenomics in diagnosing and predicting ovarian tumors. The findings indicate that artificial intelligence methods based on imaging can accurately differentiate between benign and malignant ovarian tumors, as well as classify their subtypes. Moreover, these methods are effective in forecasting survival rates, treatment outcomes, metastasis risk, and recurrence for patients with OC. It is anticipated that these advancements will function as decision-support tools for managing OC while contributing to the advancement of precision medicine.

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来源期刊
Military Medical Research
Military Medical Research Medicine-General Medicine
CiteScore
38.40
自引率
2.80%
发文量
485
审稿时长
8 weeks
期刊介绍: Military Medical Research is an open-access, peer-reviewed journal that aims to share the most up-to-date evidence and innovative discoveries in a wide range of fields, including basic and clinical sciences, translational research, precision medicine, emerging interdisciplinary subjects, and advanced technologies. Our primary focus is on modern military medicine; however, we also encourage submissions from other related areas. This includes, but is not limited to, basic medical research with the potential for translation into practice, as well as clinical research that could impact medical care both in times of warfare and during peacetime military operations.
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