Take your healthcare analytics and machine learning skills to the next level! Advanced Healthcare Analytics brings together neural networks, deep learning imaging models, and clinical natural language processing (NLP) to solve high-value problems in modern healthcare. You will explore architectures for clinical prediction, apply convolutional neural networks to medical imaging, and use domain-specific text models for clinical notes. The course also covers responsible AI for safe, ethical deployment, including chatbots and LLM-powered tools.

您将学到什么
Apply neural network architectures and training techniques to clinical prediction tasks.
Build and evaluate deep learning models for medical imaging applications.
Apply NLP techniques, including transformers, to extract insights from clinical text.
Design safe and effective analytics-driven clinical workflows, including chatbot-based interactions.
您将获得的技能
要了解的详细信息
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- 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
This module introduces the foundations and advanced concepts of neural networks used in clinical analytics. You will begin by understanding how neural networks represent nonlinear patterns in healthcare datasets, including risk factors, clinical measurements, and temporal indicators. Then you will cover essential components such as neurons, activation functions, architecture depth, loss functions, and optimization strategies, emphasizing their relevance in clinical tasks such as readmission prediction or risk stratification. You will explore training methodologies, including backpropagation, regularization techniques, and best practices for ensuring robust performance across diverse patient populations. In addition, you will examine advanced concepts such as weight initialization, batch normalization, dropout, and learning rate scheduling, all common tools in healthcare modeling pipelines. Finally, you will learn about model interpretability methods, preparing you to reason about predictions in regulated environments where accountability and transparency are critical.
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
This module focuses on deep learning approaches for medical imaging, highlighting clinical use cases across radiology, pathology, pulmonology, and other specialties. You will start by examining common imaging modalities and preprocessing requirements that ensure consistent, meaningful inputs for modeling. You will then learn about convolutional neural networks and how spatial hierarchies and receptive fields allow deep models to recognize subtle clinical patterns in X-rays, CT scans, and other imaging studies. You will explore modern architectures used widely in clinical AI systems, including residual networks and segmentation models. Additionally, you will learn about advanced imaging tasks such as localization, detection, and segmentation, along with explainability techniques that give clinicians insight into how these models make decisions. Through hands-on labs, you will apply these methods directly to imaging data and evaluate their clinical relevance.
涵盖的内容
5个视频3篇阅读材料4个作业1个讨论话题4个插件
Clinical notes contain rich contextual information not captured in structured EHR fields. This module explores methods for extracting meaning from unstructured clinical text, beginning with preprocessing techniques tailored to medical language, such as handling abbreviations, misspellings, and protected health information. You will examine classical and modern representation techniques, including term-frequency methods, embeddings, and transformer-based representations. The module then progresses to advanced NLP applications, including entity extraction, concept linking, summarization, and the design of clinical conversational agents. Special emphasis is placed on the safe and responsible use of large language models in regulated settings. You will learn about building classification and extraction models and design safe prompting strategies for simple clinical chatbot behavior.
涵盖的内容
4个视频2篇阅读材料4个作业1个讨论话题4个插件
The final module integrates the advanced analytics techniques studied throughout the course. You will build and evaluate a binary disease prediction model using structured clinical data. You will implement and compare two different modeling approaches to understand how model choice and complexity influence prediction outcomes on the same clinical dataset. The course concludes with a summary and a final exam, connecting these advanced methods to broader healthcare AI initiatives.
涵盖的内容
1个视频2篇阅读材料1个作业1次同伴评审1个讨论话题2个插件
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常见问题
You’ll work with realistic datasets that are representative of electronic health records, radiology studies, and provider documentation. These datasets are used to practice healthcare analytics tasks, including imaging and clinical NLP. The focus is on building skills you can transfer to real settings while keeping privacy and safety in mind.
You do not need clinical training to take this course. However, because this is an intermediate-level course, learners should be familiar with basic healthcare terminology and how clinical data is commonly described. The course focuses on using models as decision-support tools, while clinical judgment remains with qualified healthcare professionals.
Yes. You’ll learn how to use models as decision-support tools and evaluate outputs before they are used in a workflow. The course emphasizes interpretability, practical evaluation, and safety considerations, so you can judge reliability, limitations, and appropriate use in healthcare settings.
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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。






