Healthcare Intelligence

Healthcare Intelligence

Publications

Opportunities

Overview

Breakthrough advances in AI and machine learning (ML) have led to ambitious visions of how new systems can help revolutionize healthcare. These range from new approaches to understanding health risks, predicting disease progression, and creating personalized health interventions for improved patient outcomes; through to the development of innovative tools to support the practices of healthcare professionals, and reduce spending.

To realize this tremendous potential requires the development of machine learning applications that are effective, trustworthy and implementable in real healthcare contexts. Tackling this challenging ambition is the Healthcare Intelligence team – a multi-disciplinary group of machine learning experts, social scientists, designers and engineers. Working jointly with experts in healthcare, privacy and compliance, the team develops human-centred ML solutions that can transform care pathways and improve health outcomes.

We are particularly interested in the following areas:

Hospital care

Managing patient flows along healthcare pathways is a critical concern for hospitals in both operational and clinical terms. Working with key clinical partners, we are developing Machine-Learning based systems that will offer intelligent insights about these operational and clinical events. The research adopts a human centred machine learning perspective that combines deep clinical knowledge, ethnographic understanding of clinical work practices and machine learning expertise to develop ML insights that are actionable in real world clinical contexts.

Immunomics

The adaptive immune system is an incredibly complex and powerful defense against disease.  With Microsoft Immunomics we are developing state-of-the-art deep generative models trained on vast amounts of T-cell repertoire data, learning not only to predict but to understand disease.  By decoding the immune system in this way,  we can transform precision diagnostics and treatment options for many diseases.


Medical imaging

In Project InnerEye, we are developing ML-based productivity tools for the automatic, quantitative analysis of radiological images – in particular, our work turns radiological images into measuring devices. Our focus is on the following applications: 1. extraction of targeted radiomics measurements for quantitative radiology, 2. efficient contouring for radiotherapy planning, and 3. precise surgery planning and navigation.

Mental health

One in four of us will be affected by a mental health condition at some point in our lives. Mental health presents one of the most challenging and under-investigated domains of machine learning research. With the great need for effective mental healthcare services combined with breakthrough advances in machine learning and AI, we are exploring how a human-centric approach to machine learning can meaningfully assist in the detection, diagnosis, monitoring, and treatment of mental health problems.

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