Artificial intelligence for biomarker discovery in Alzheimer's disease and dementia

With the increase in large multimodal cohorts and high-throughput technologies, the potential for discovering novel biomarkers is no longer limited by data set size. Artificial intelligence (AI) and machine learning approaches have been developed to detect novel biomarkers and interactions in comple...

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Hlavní autoři: Winchester, LM, Harshfield, EL, Shi, L, Badhwar, A, Al Khleifat, A, Clarke, N, Dehsarvi, A, Lengyel, I, Lourida, I, Madan, CR, Marzi, SJ, Proitsi, P, Rajkumar, AP, Rittman, T, Silajdžić, E, Tamburin, S, Ranson, JM, Llewellyn, DJ
Médium: Journal article
Jazyk:English
Vydáno: Wiley 2023
Popis
Shrnutí:With the increase in large multimodal cohorts and high-throughput technologies, the potential for discovering novel biomarkers is no longer limited by data set size. Artificial intelligence (AI) and machine learning approaches have been developed to detect novel biomarkers and interactions in complex data sets. We discuss exemplar uses and evaluate current applications and limitations of AI to discover novel biomarkers. Remaining challenges include a lack of diversity in the data sets available, the sheer complexity of investigating interactions, the invasiveness and cost of some biomarkers, and poor reporting in some studies. Overcoming these challenges will involve collecting data from underrepresented populations, developing more powerful AI approaches, validating the use of noninvasive biomarkers, and adhering to reporting guidelines. By harnessing rich multimodal data through AI approaches and international collaborative innovation, we are well positioned to identify clinically useful biomarkers that are accurate, generalizable, unbiased, and acceptable in clinical practice.