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首页> 外文期刊>JMIR Medical Informatics >Automated Modular Magnetic Resonance Imaging Clinical Decision Support System (MIROR): An Application in Pediatric Cancer Diagnosis
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Automated Modular Magnetic Resonance Imaging Clinical Decision Support System (MIROR): An Application in Pediatric Cancer Diagnosis

机译:自动化模块化磁共振成像临床决策支持系统(MIROR):在小儿癌症诊断中的应用

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Background Advances in magnetic resonance imaging and the introduction of clinical decision support systems has underlined the need for an analysis tool to extract and analyze relevant information from magnetic resonance imaging data to aid decision making, prevent errors, and enhance health care. Objective The aim of this study was to design and develop a modular medical image region of interest analysis tool and repository (MIROR) for automatic processing, classification, evaluation, and representation of advanced magnetic resonance imaging data. Methods The clinical decision support system was developed and evaluated for diffusion-weighted imaging of body tumors in children (cohort of 48 children, with 37 malignant and 11 benign tumors). Mevislab software and Python have been used for the development of MIROR. Regions of interests were drawn around benign and malignant body tumors on different diffusion parametric maps, and extracted information was used to discriminate the malignant tumors from benign tumors. Results Using MIROR, the various histogram parameters derived for each tumor case when compared with the information in the repository provided additional information for tumor characterization and facilitated the discrimination between benign and malignant tumors. Clinical decision support system cross-validation showed high sensitivity and specificity in discriminating between these tumor groups using histogram parameters. Conclusions MIROR, as a diagnostic tool and repository, allowed the interpretation and analysis of magnetic resonance imaging images to be more accessible and comprehensive for clinicians. It aims to increase clinicians’ skillset by introducing newer techniques and up-to-date findings to their repertoire and make information from previous cases available to aid decision making. The modular-based format of the tool allows integration of analyses that are not readily available clinically and streamlines the future developments.
机译:背景技术磁共振成像技术的进步和临床决策支持系统的引入,凸显了对一种分析工具的需求,该分析工具可以从磁共振成像数据中提取和分析相关信息,以帮助决策,防止错误并增强医疗保健。目的这项研究的目的是设计和开发模块化医学图像感兴趣区域分析工具和存储库(MIROR),用于自动处理,分类,评估和表示高级磁共振成像数据。方法开发了临床决策支持系统,并对儿童(48例儿童,其中37例恶性肿瘤和11例良性肿瘤)的身体肿瘤扩散加权成像进行了评估。 Mevislab软件和Python已用于开发MIROR。在不同的扩散参数图上,在良性和恶性身体肿瘤周围绘制感兴趣区域,并使用提取的信息将恶性肿瘤与良性肿瘤区分开。结果使用MIROR,与存储库中的信息进行比较时,为每个肿瘤病例得出的各种直方图参数为肿瘤表征提供了更多信息,并有助于区分良性和恶性肿瘤。临床决策支持系统的交叉验证表明,使用直方图参数区分这些肿瘤组具有很高的敏感性和特异性。结论MIROR作为诊断工具和存储库,可以使临床医生更容易访问和全面理解磁共振成像图像。它的目的是通过将更新的技术和最新的发现引入他们的库中,从而增加临床医生的技能,并提供以前病例的信息以帮助决策。该工具基于模块的格式允许集成临床上不易获得的分析,并简化未来的发展。

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