LGIVNCJun 29, 2022

Computer-aided diagnosis and prediction in brain disorders

arXiv:2206.14683v23 citationsh-index: 169
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving diagnosis and prediction in brain disorders for clinicians and patients, but is incremental as it synthesizes existing knowledge.

This chapter reviews computer-aided methods for diagnosing and predicting brain disorders, such as dementia and brain tumors, to support clinical decision-making, but does not report specific numerical results.

Computer-aided methods have shown added value for diagnosing and predicting brain disorders and can thus support decision making in clinical care and treatment planning. This chapter will provide insight into the type of methods, their working, their input data - such as cognitive tests, imaging and genetic data - and the types of output they provide. We will focus on specific use cases for diagnosis, i.e. estimating the current 'condition' of the patient, such as early detection and diagnosis of dementia, differential diagnosis of brain tumours, and decision making in stroke. Regarding prediction, i.e. estimation of the future 'condition' of the patient, we will zoom in on use cases such as predicting the disease course in multiple sclerosis and predicting patient outcomes after treatment in brain cancer. Furthermore, based on these use cases, we will assess the current state-of-the-art methodology and highlight current efforts on benchmarking of these methods and the importance of open science therein. Finally, we assess the current clinical impact of computer-aided methods and discuss the required next steps to increase clinical impact.

Foundations

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