How Machine Learning is Powering Neuroimaging to Improve Brain Health

被引:0
|
作者
Nalini M. Singh
Jordan B. Harrod
Sandya Subramanian
Mitchell Robinson
Ken Chang
Suheyla Cetin-Karayumak
Adrian Vasile Dalca
Simon Eickhoff
Michael Fox
Loraine Franke
Polina Golland
Daniel Haehn
Juan Eugenio Iglesias
Lauren J. O’Donnell
Yangming Ou
Yogesh Rathi
Shan H. Siddiqi
Haoqi Sun
M. Brandon Westover
Susan Whitfield-Gabrieli
Randy L. Gollub
机构
[1] Massachusetts General Hospital,Department of Psychiatry and Martinos Center for Biomedical Imaging, Department of Radiology
[2] Harvard-MIT Health Sciences and Technology,Department of Radiology
[3] Massachusetts Institute of Technology,Department of Neurology and McCance Center for Brain Health / Harvard Medical School
[4] University of Massachusetts Boston,Centre for Medical Image Computing
[5] Boston Children’s Hospital,Martinos Center for Biomedical Imaging, Department of Radiology
[6] Harvard Medical School,Computer Science and Artificial Intelligence Laboratory
[7] Massachusetts General Hospital,Institute of Systems Neuroscience, Medical Faculty
[8] University College London,Institute of Neuroscience and Medicine
[9] Massachusetts General Hospital and Harvard Medical School,Department of Radiology
[10] Massachusetts Institute of Technology,Department of Psychology
[11] Heinrich Heine University Düsseldorf,Martinos, Radiology, MGH
[12] Brain & Behaviour (INM-7) Research Centre Jülich,Department of Psychiatry
[13] Brigham and Women’s Hospital and Harvard Medical School,Center for Brain Circuit Therapeutics, Department of Neurology, Psychiatry, and Radiology
[14] Northeastern University,undefined
[15] MIT,undefined
[16] Brigham and Women’s Hospital and Harvard Medical School,undefined
[17] Brigham and Women’s Hospital and Harvard Medical School,undefined
来源
Neuroinformatics | 2022年 / 20卷
关键词
Machine learning; Deep learning; Clinical translational neuroimaging; Brain health; MRI; PET; EEG; Transcranial magnetic stimulation;
D O I
暂无
中图分类号
学科分类号
摘要
This report presents an overview of how machine learning is rapidly advancing clinical translational imaging in ways that will aid in the early detection, prediction, and treatment of diseases that threaten brain health. Towards this goal, we aresharing the information presented at a symposium, “Neuroimaging Indicators of Brain Structure and Function - Closing the Gap Between Research and Clinical Application”, co-hosted by the McCance Center for Brain Health at Mass General Hospital and the MIT HST Neuroimaging Training Program on February 12, 2021. The symposium focused on the potential for machine learning approaches, applied to increasingly large-scale neuroimaging datasets, to transform healthcare delivery and change the trajectory of brain health by addressing brain care earlier in the lifespan. While not exhaustive, this overview uniquely addresses many of the technical challenges from image formation, to analysis and visualization, to synthesis and incorporation into the clinical workflow. Some of the ethical challenges inherent to this work are also explored, as are some of the regulatory requirements for implementation. We seek to educate, motivate, and inspire graduate students, postdoctoral fellows, and early career investigators to contribute to a future where neuroimaging meaningfully contributes to the maintenance of brain health.
引用
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页码:943 / 964
页数:21
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