Build the machine learning foundation for healthcare demands! Learn how to turn complex clinical data into models that drive decision support, early warning, diagnostic assistance, and personalized treatment insights.

您将学到什么
Classify healthcare problems as supervised, unsupervised, or temporal ML tasks aligned with clinical workflows.
Build and train clinical ML models using meaningful features for prediction, clustering, and time-based risk scoring.
Evaluate models using discrimination, calibration, and clinical utility metrics with patient- and time-aware validation.
Interpret outputs, detect bias or leakage, and deliver actionable results to technical and clinical stakeholders.
您将获得的技能
- Feature Engineering
- Predictive Analytics
- Clinical Informatics
- Patient Safety
- Statistical Machine Learning
- Model Evaluation
- Clinical Data Management
- Supervised Learning
- Predictive Modeling
- Dimensionality Reduction
- Time Series Analysis and Forecasting
- Health Informatics
- Decision Tree Learning
- Classification Algorithms
- Logistic Regression
- Forecasting
- Machine Learning
- Data Preprocessing
- Unsupervised Learning
- Applied Machine Learning
- 技能部分已折叠。显示 9 项技能,共 20 项。
要了解的详细信息
了解顶级公司的员工如何掌握热门技能

积累特定领域的专业知识
- 向行业专家学习新概念
- 获得对主题或工具的基础理解
- 通过实践项目培养工作相关技能
- 获得可共享的职业证书

该课程共有4个模块
Supervised learning forms the core of many widely used clinical decision-support tools, enabling predictions such as mortality risk, diagnostic assistance, readmission likelihood, and adverse event detection. In this module, you will understand how to convert clinical problems into prediction tasks, define features and labels appropriately, and evaluate whether supervised learning is the right framework for a given healthcare question. The module introduces essential algorithms, including logistic regression, tree-based models, and regularized regression, with a focus on interpretability and clinical reasoning. You will also explore common data pitfalls such as class imbalance and label leakage, both of which can disrupt clinical validity if mishandled. Through practical exercises, you will build foundational models used throughout healthcare analytics.
涵盖的内容
7个视频3篇阅读材料4个作业1个讨论话题3个插件
Unsupervised learning enables clinicians and researchers to uncover hidden structure in patient populations, identify disease subtypes, and discover new risk categories when labeled outcomes are not available. This module focuses on clustering and dimensionality reduction for patient phenotyping, using both structured clinical data and aggregated EHR features. You will explore when and why unsupervised learning is used, compare major clustering algorithms, and practice interpreting clusters. You will also learn dimensionality reduction techniques used to visualize high-dimensional patient data and guide phenotype refinement. Finally, the module covers cluster validation, reproducibility, and clinical interpretability, all of which are essential to safely using unsupervised insights in healthcare.
涵盖的内容
4个视频3篇阅读材料4个作业1个讨论话题3个插件
Healthcare data is inherently temporal, encompassing vitals, lab results, medications, and clinical events collected over time. This module introduces classical and feature-based methods to represent and analyze these longitudinal patterns for early warning, deterioration detection, and forecasting tasks. You will study the challenges of irregular clinical time series, construct time-window-based and aggregation-based features, and apply non-neural sequence modeling techniques suitable for clinical environments. The second half of the module covers rigorous evaluation methods for healthcare models. You will explore discrimination, calibration, thresholding, and clinical utility metrics, and will design validation strategies that respect temporal ordering, avoid information leakage, and reflect real clinical deployment constraints.
涵盖的内容
4个视频3篇阅读材料4个作业1个讨论话题4个插件
In this final module, you will consolidate your learning of supervised learning, unsupervised learning, temporal modeling, and evaluation by completing a hands-on final project. You will complete an end-to-end project involving clinical problem formulation, model development, exploratory analysis, temporal feature construction, and model evaluation. You will justify model choices, articulate assumptions, and interpret findings from a clinical perspective. Emphasis is placed on communication and documentation, ensuring that results can be reviewed by both technical and clinical decision-makers. The module concludes with a course summary, a glossary of key terms, and a final exam designed to assess their conceptual understanding across all modules.
涵盖的内容
1个视频3篇阅读材料1个作业1次同伴评审1个讨论话题1个插件
获得职业证书
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提供方
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状态:免费试用
状态:免费试用
状态:预览Cleveland Clinic
状态:预览Northeastern University
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
常见问题
You’ll work with realistic healthcare datasets that reflect common clinical machine learning challenges, such as missing values, irregular measurements, and time-based patterns. The labs help you practice building and evaluating models in conditions similar to real-world healthcare analytics.
This course is built for healthcare use cases where model performance must be interpreted through a clinical lens. It emphasizes how to frame clinical prediction problems, handle temporal healthcare data, and evaluate models in ways that reflect clinical risk and patient safety.
You’ll learn supervised learning for clinical prediction (classification and regression), unsupervised learning for patient subgroup discovery (clustering and dimensionality reduction), and temporal/sequence-based approaches for longitudinal healthcare data.
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¹ 本课程的部分作业采用 AI 评分。对于这些作业,将根据 Coursera 隐私声明使用您的数据。






