Genetic algorithm with logistic regression for prediction of progression to Alzheimer's disease

被引:0
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作者
Piers Johnson
Luke Vandewater
William Wilson
Paul Maruff
Greg Savage
Petra Graham
Lance S Macaulay
Kathryn A Ellis
Cassandra Szoeke
Ralph N Martins
Christopher C Rowe
Colin L Masters
David Ames
Ping Zhang
机构
[1] CSIRO,Digital Productivity Flagship
[2] The Florey Institute of Neuroscience and Mental Health,ARC Centre of Excellence in Cognition and its Disorders, and Department of Psychology
[3] CogState Ltd,Department of Statistics, Faculty of Science
[4] Macquarie University,Food and Nutrition Flagship
[5] Macquarie University,Academic Unit for Psychiatry of Old Age, Department of Psychiatry
[6] CSIRO,School of Exercise Biomedical and Health Sciences
[7] The University of Melbourne,Department of Nuclear Medicine & Centre for PET
[8] Mental Health Research Institute,Department of Medicine
[9] Edith Cowan University,Department of Pathology
[10] Sir James McCusker Alzheimer's Disease Research Unit,undefined
[11] Austin Health,undefined
[12] Melbourne,undefined
[13] University of Melbourne,undefined
[14] The University of Melbourne,undefined
[15] National Ageing Research Institute,undefined
[16] CRC for Mental Health,undefined
来源
BMC Bioinformatics | / 15卷
关键词
Genetic Algorithm; Mild Cognitive Impairment; Monte Carlo; Clinical Dementia Rate; Semantic Fluency;
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