Muhamad Rodhi Supriyadi, Azurah Bte A Samah, Jemie Muliadi, Raja Azman Raja Awang, Noor Huda Ismail, Hairudin Abdul Majid, Mohd Shahizan Bin Othman, Siti Zaiton Binti Mohd Hashim
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引用次数: 0
摘要
背景:医学影像是必不可少的,它为临床医生提供了有关人体的有用信息,以诊断各种健康问题。基于医学成像的疾病早期诊断可以减轻严重后果的风险,并提高长期健康结果。然而,基于医学成像诊断疾病的任务可能具有挑战性,因为临床医生只能解释医学成像的结果,这既耗时又容易受到人为错误的影响。通过分析大量数据和识别医生可能无法立即发现的趋势,集成模型有可能提高基于医学成像的疾病诊断的准确性。然而,训练和维护多个集成模型需要大量的内存和处理资源。这些挑战突出了有效和可扩展的集成模型的必要性,这些模型可以管理复杂的医学成像任务。方法:本研究采用单反摄影技术探讨最新进展和方法。根据PRISMA概述的原则,对Scopus和Web of Science数据库进行全面、系统的检索,关键词为ensemble model和medical imaging。结果:本研究共收录了2019年至2024年间发表的75篇论文。分类、方法和医学成像的使用是本研究中包含的30篇被引论文分析的关键因素,重点是诊断疾病。结论:研究人员已经观察到使用医学成像进行疾病诊断的集成模型的出现,因为它已经证明了准确性的提高,并且可以通过强调集成模型的局限性来指导未来的研究。
A systematic literature review: exploring the challenges of ensemble model for medical imaging.
Background: Medical imaging has been essential and has provided clinicians with useful information about the human body to diagnose various health issues. Early diagnosis of diseases based on medical imaging can mitigate the risk of severe consequences and enhance long-term health outcomes. Nevertheless, the task of diagnosing diseases based on medical imaging can be challenging due to the exclusive ability of clinicians to interpret the outcomes of medical imaging, which is time-consuming and susceptible to human fallibility. The ensemble model has the potential to enhance the accuracy of diagnoses of diseases based on medical imaging by analyzing vast volumes of data and identifying trends that may not be immediately apparent to doctors. However, it takes a lot of memory and processing resources to train and maintain several ensemble models. These challenges highlight the necessity of effective and scalable ensemble models that can manage the intricacies of medical imaging assignments.
Methods: This study employed an SLR technique to explore the latest advancements and approaches. By conducting a thorough and systematic search of Scopus and Web of Science databases in accordance with the principles outlined in the PRISMA, employing keywords namely ensemble model and medical imaging.
Results: This study included a total of 75 papers that were published between 2019 and 2024. The categorization, methodologies, and use of medical imaging were key factors examined in the analysis of the 30 cited papers included in this study, with a focus on diagnosing diseases.
Conclusions: Researchers have observed the emergence of an ensemble model for disease diagnosis using medical imaging since it has demonstrated improved accuracy and may guide future studies by highlighting the limitations of the ensemble model.
期刊介绍:
BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.