Globally, there is a substantial unmet need to diagnose various diseases effectively. The complexity of the different disease mechanisms and underlying symptoms of the patient population presents massive challenges to developing the early diagnosis tool and effective treatment. Machine Learning (ML), an area of Artificial Intelligence (AI), enables researchers, physicians, and patients to solve some of these issues. Based on relevant research, this review explains how Machine Learning (ML) and Deep Learning (DL) are being used to help in the early identification of numerous diseases. To begin, a bibliometric study of the publication is given using data from the Scopus and Web of Science (WOS) databases. The bibliometric study of 1216 publications was undertaken to determine the most prolific authors, nations, organizations, and most cited articles. The review then summarizes the most recent trends and approaches in Machine Learning-based Disease Diagnosis (MLBDD), considering the following factors: algorithm, disease types, data type, application, and evaluation metrics. Finally, the paper highlights key results and provides insight into future trends and opportunities in the MLBDD area.
翻译:在全球范围,对各种疾病进行有效诊断的需要大量未得到满足,不同疾病机制的复杂性和患者群体的基本症状给发展早期诊断工具和有效治疗带来了巨大的挑战。人工智能领域的机器学习(ML)使研究人员、医生和病人能够解决其中的一些问题。根据相关研究,本审查报告解释了如何利用机器学习(ML)和深层学习(DL)帮助早期识别多种疾病。首先,利用Scopus和科学网数据库的数据对出版物进行二元计量研究。对1216种出版物进行了二元计量研究,以确定最富的作者、国家、组织和大多数引用的文章。然后,该审查总结了机器学习疾病诊断(MLBDD)的最新趋势和方法,同时考虑到以下因素:算法、疾病类型、数据类型、应用和评价指标。最后,论文强调了关键结果,并提供了对MLBDDD领域未来趋势和机会的深入了解。