Beyond mathematics, statistics, and programming: data science, machine learning, and artificial intelligence competencies and curricula for clinicians, informaticians, science journalists, and researchers.

IF 1.2 Q4 HEALTH POLICY & SERVICES Health Systems Pub Date : 2023-07-18 eCollection Date: 2023-01-01 DOI:10.1080/20476965.2023.2237745
William R Hersh, Robert E Hoyt, Steven Chamberlin, Jessica S Ancker, Aditi Gupta, Tara B Borlawsky-Payne
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Abstract

Data science, machine learning and artificial intelligence applications impact clinicians, informaticians, science journalists, and researchers. Most biomedical data science training focuses on learning a programming language in addition to higher mathematics and advanced statistics. This approach is appropriate for graduate students but greatly reduces the number of individuals in healthcare who can be involved in data science. To serve these four stakeholder audiences, we describe several curricular strategies focusing on solving real problems of interest to these audiences. Relevant competencies for these audiences include using intuitive programming tools that facilitate data exploration with minimal programming background, creating data models, evaluating results of data analyses, and assessing data science research reports, among others. Offering the curricula described here more broadly could broaden the stakeholder groups knowledgeable about and engaged in data science.

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超越数学、统计学和编程:数据科学、机器学习和人工智能能力以及临床医生、信息学家、科学记者和研究人员的课程
数据科学、机器学习和人工智能应用影响着临床医生、信息学家、科学记者和研究人员。大多数生物医学数据科学培训的重点是学习编程语言以及高等数学和高级统计学。这种方法适合研究生,但却大大减少了医疗保健行业中能够参与数据科学的人员数量。为了服务于这四个利益相关者,我们介绍了几种课程策略,重点是解决这些受众感兴趣的实际问题。与这些受众相关的能力包括:使用直观的编程工具(这些工具可在最低限度的编程背景下促进数据探索)、创建数据模型、评估数据分析结果以及评估数据科学研究报告等。更广泛地提供本文所述课程可以扩大了解和参与数据科学的利益相关者群体。
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来源期刊
Health Systems
Health Systems HEALTH POLICY & SERVICES-
CiteScore
4.20
自引率
11.10%
发文量
20
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