Department of Pharmacy and Biotechnology, University of Bologna, Bologna, Italy.
Division of Oncologic Gynecology, IRCCS-Azienda Ospedaliero-Universitaria di Bologna, Bologna, Italy.
PLoS One. 2022 Jun 8;17(6):e0267727. doi: 10.1371/journal.pone.0267727. eCollection 2022.
Uterine body cancers (UBC) are represented by endometrial carcinoma (EC) and uterine sarcoma (USa). The clinical management of both is hindered by the complex classification of patients into risk classes. This problem could be simplified through the development of predictive models aimed at treatment tailoring based on tumor and patient characteristics. In this context, radiomics represents a method of extracting quantitative data from images in order to non-invasively acquire tumor biological and genetic information and to predict response to treatments and prognosis. Furthermore, artificial intelligence (AI) methods are an emerging field of translational research, with the aim of managing the amount of data provided by the various -omics, including radiomics, through the process of machine learning, in order to promote precision medicine.
The aim of this protocol for systematic review is to provide an overview of radiomics and AI studies on UBCs.
A systematic review will be conducted using PubMed, Scopus, and the Cochrane Library to collect papers analyzing the impact of radiomics and AI on UBCs diagnosis, prognostic classification, and clinical outcomes. The PICO strategy will be used to formulate the research questions: What is the impact of radiomics and AI on UBCs on diagnosis, prognosis, and clinical results? How could radiomics or AI improve the differential diagnosis between sarcoma and fibroids? Does Radiomics or AI have a predictive role on UBCs response to treatments? Three authors will independently screen articles at title and abstract level based on the eligibility criteria. The risk of bias and quality of the cohort studies, case series, and case reports will be based on the QUADAS 2 quality assessment tools.
PROSPERO registration number: CRD42021253535.
子宫体癌(UBC)包括子宫内膜癌(EC)和子宫肉瘤(USa)。由于患者被复杂地分为风险类别,这两种癌症的临床管理都受到阻碍。通过开发旨在根据肿瘤和患者特征进行治疗定制的预测模型,可以简化这个问题。在这种情况下,放射组学是一种从图像中提取定量数据的方法,目的是无创地获取肿瘤的生物学和遗传学信息,并预测对治疗的反应和预后。此外,人工智能(AI)方法是转化研究的一个新兴领域,其目的是通过机器学习的过程来管理各种组学(包括放射组学)提供的数据量,以促进精准医学。
本系统综述方案旨在概述 UBC 放射组学和 AI 研究。
将通过 PubMed、Scopus 和 Cochrane 图书馆进行系统综述,以收集分析放射组学和 AI 对 UBC 诊断、预后分类和临床结果影响的论文。将使用 PICO 策略制定研究问题:放射组学和 AI 对 UBC 诊断、预后和临床结果有何影响?放射组学或 AI 如何改善肉瘤和纤维瘤的鉴别诊断?放射组学或 AI 是否对 UBC 对治疗的反应具有预测作用?三名作者将根据纳入标准独立筛选标题和摘要水平的文章。队列研究、病例系列和病例报告的偏倚风险和质量将基于 QUADAS 2 质量评估工具进行评估。
PROSPERO 注册号:CRD42021253535。