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Recent advances in the pharmacological therapy of chronic heart failure: Evidence and guidelines.慢性心力衰竭药理学治疗的最新进展:证据和指南。
Pharmacol Ther. 2022 Oct;238:108185. doi: 10.1016/j.pharmthera.2022.108185. Epub 2022 Apr 9.
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Acute coronary syndromes.急性冠状动脉综合征。
Lancet. 2022 Apr 2;399(10332):1347-1358. doi: 10.1016/S0140-6736(21)02391-6.
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Editorial for "Transfer Learning Strategy Based on Unsupervised Learning and Ensemble Learning for Breast Cancer Molecular Subtype Prediction Using Dynamic Contrast Enhanced MRI".《基于无监督学习和集成学习的迁移学习策略在利用动态对比增强磁共振成像预测乳腺癌分子亚型中的应用》编辑评论
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机器学习在心血管疾病中的新兴作用:一篇叙述性综述。

The emerging roles of machine learning in cardiovascular diseases: a narrative review.

作者信息

Chen Liang, Han Zhijun, Wang Junhong, Yang Chengjian

机构信息

Department of Cardiology, Wuxi Second People's Hospital of Nanjing Medical University, Wuxi, China.

Department of Clinical Laboratory, Wuxi Second People's Hospital of Nanjing Medical University, Wuxi, China.

出版信息

Ann Transl Med. 2022 May;10(10):611. doi: 10.21037/atm-22-1853.

DOI:10.21037/atm-22-1853
PMID:35722382
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9201135/
Abstract

BACKGROUND AND OBJECTIVE

With the wide application of electronic medical record systems in hospitals, massive medical data are available. This type of medical data has the characteristics of heterogeneity and multi-dimensionality. Traditional statistical methods cannot fully extract and use such data, but with their non-linear and cross-learning modes, machine-learning (ML) algorithms based on artificial intelligence can address these shortcomings. To explore the application of ML algorithms in the cardiovascular field, we retrieved and reviewed relevant articles published in the last 6 years and found that ML is practical and accurate in the auxiliary diagnosis of cardiovascular diseases. Thus, this article reviewed the research progress of ML in cardiovascular disease.

METHODS

This study searched relevant literature published in National Center for Biotechnology Information (NCBI) PubMed from 2016 to 2022. The relevant literature was extracted from NCBI PubMed with the following keywords and their combinations: "machine learning", "artificial intelligence", "cardiology", "cardiovascular disease", "echocardiography", "electrocardiogram" and "prediction model". All articles included in the review are English.

KEY CONTENT AND FINDINGS

The review found that ML is practical and accurate in the diagnosis of cardiovascular diseases. Besides, ML can build clinical risk prediction models and help doctors evaluate the prognosis of patients.

CONCLUSIONS

The study summarized the progress of ML in cardiovascular diseases and confirmed its advantages in clinical application. In the future, models and software based on ML will be common auxiliary tools in clinical practice.

摘要

背景与目的

随着电子病历系统在医院的广泛应用,可获取大量医疗数据。这类医疗数据具有异质性和多维度性的特点。传统统计方法无法充分提取和利用此类数据,但基于人工智能的机器学习(ML)算法以其非线性和交叉学习模式能够弥补这些不足。为探讨ML算法在心血管领域的应用,我们检索并回顾了过去6年发表的相关文章,发现ML在心血管疾病的辅助诊断中实用且准确。因此,本文综述了ML在心血管疾病方面的研究进展。

方法

本研究检索了2016年至2022年在国家生物技术信息中心(NCBI)的PubMed上发表的相关文献。从NCBI PubMed中提取相关文献时使用了以下关键词及其组合:“机器学习”、“人工智能”、“心脏病学”、“心血管疾病”、“超声心动图”、“心电图”和“预测模型”。纳入综述的所有文章均为英文。

关键内容与发现

综述发现ML在心血管疾病诊断中实用且准确。此外,ML可以构建临床风险预测模型并帮助医生评估患者的预后。

结论

该研究总结了ML在心血管疾病方面的进展,并证实了其在临床应用中的优势。未来,基于ML的模型和软件将成为临床实践中常见的辅助工具。