Course list

In the healthcare sector, patient data is abundant. Machine learning can transform this data into a powerful tool for prediction and analysis. In this course, you will explore supervised and unsupervised learning, two key machine learning approaches that can help you maximize your data's potential. Before addressing healthcare challenges with machine learning, it's essential to begin with high-quality data. You'll examine and practice the key steps to clean and prepare raw data, ensuring it's ready for effective machine analysis.

Once you've mastered these data preparation processes, you'll be ready to apply machine learning to healthcare analysis. You'll use supervised learning techniques to predict whether a patient is likely to experience sepsis. You'll also leverage unsupervised learning methods to identify similar subtypes within a large group of patients. By the end of the course, you'll realize how machine learning can improve efficiency for medical professionals and personalize patient care.

Students must have intermediate proficiency in Python programming and machine learning to succeed in this course.

Data is critical to the diagnosis and treatment of patients. In this course, you will examine the efficient storage, management, and processing of healthcare data, with a focus on implementing relational data models that emphasize structure, integrity, and manipulation. You'll also explore programming languages essential for querying information from relational and non-relational databases, and you'll gain proficiency in leveraging these languages to extract valuable insights from healthcare datasets through practical exercises. You'll also develop the skills to adapt to diverse data management challenges within healthcare systems.

By mastering these competencies, you will be well prepared to navigate the complex landscape of healthcare data management while ensuring compliance with regulatory standards and optimizing data-driven decision-making processes.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Machine Learning in Healthcare

Clinical notes and patient records contain vast amounts of data, but this data is not always in a format machines can interpret. In this course, you will discover how natural language processing (NLP) can help you transform free text into structured data for extracting insights. You'll start by reviewing NLP methods to prepare raw text for machine analysis. Using the Python package spaCy, you'll perform NLP tasks like sentence splitting, tokenization, part-of-speech tagging, and parsing.

You will then explore key NLP applications. Using the scikit-learn and scispaCy Python packages, you'll apply text classification and named entity recognition (NER) to gain insights from medical texts. Finally, you'll advance to deep learning models, examining their application for healthcare tasks such as the de-identification of patient data. You will also consider the ethical implications of using such models, focusing on patient security and privacy. By the end of this course, you'll gain hands-on experience using NLP techniques to extract insights from healthcare data while also considering how to apply these methods ethically and responsibly.

Students must have intermediate proficiency in Python programming and machine learning to succeed in this course.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Machine Learning in Healthcare
  • Data Management in Healthcare

Artificial intelligence is influenced by various human factors. In this course, you will delve into the human elements that affect the design, implementation, and evaluation of tools in the healthcare industry. You'll examine how to apply user-centered and participatory design theory to potential solutions in healthcare, including the FAVES principles: fairness, appropriateness, validity, effectiveness, and safety. You'll discover how to create and assess a design based on a real-life problem, equipping you with the skills to translate theory into practice. You'll also explore how human factors impact different aspects of artificial intelligence and discover how to incorporate these considerations when designing a healthcare product or service related to digital health.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Machine Learning in Healthcare
  • Data Management in Healthcare
  • Natural Language Processing in Healthcare

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