Artificial Intelligence on FDG PET Images Identifies Mild Cognitive Impairment Patients with Neurodegenerative Disease

被引:0
作者
Joan Prats-Climent
Maria Teresa Gandia-Ferrero
Irene Torres-Espallardo
Lourdes Álvarez-Sanchez
Begoña Martínez-Sanchis
Consuelo Cháfer-Pericás
Ignacio Gómez-Rico
Leonor Cerdá-Alberich
Fernando Aparici-Robles
Miquel Baquero-Toledo
María José Rodríguez-Álvarez
Luis Martí-Bonmatí
机构
[1] Universitat Politècnica de València (UPV),Instituto de Instrumentación Para Imagen Molecular (I3M)
[2] La Fe Health Research Institute (IIS La Fe),Biomedical Imaging Research Group (GIBI230)
[3] La Fe University and Polytechnic Hospital,Nuclear Medicine Service
[4] Avenida Fernando Abril Martorell,Radiology Service
[5] Neurology Service,undefined
[6] La Fe University and Polytechnic Hospital,undefined
[7] Avenida Fernando Abril Martorell,undefined
[8] La Fe University and Polytechnic Hospital,undefined
[9] Avenida Fernando Abril Martorell,undefined
来源
Journal of Medical Systems | / 46卷
关键词
PET; Artificial intelligence; Deep learning; Alzheimer; Mild cognitive impairment; Neurodegenerative diseases;
D O I
暂无
中图分类号
学科分类号
摘要
The purpose of this project is to develop and validate a Deep Learning (DL) FDG PET imaging algorithm able to identify patients with any neurodegenerative diseases (Alzheimer's Disease (AD), Frontotemporal Degeneration (FTD) or Dementia with Lewy Bodies (DLB)) among patients with Mild Cognitive Impairment (MCI). A 3D Convolutional neural network was trained using images from the Alzheimer's Disease Neuroimaging Initiative (ADNI) database. The ADNI dataset used for the model training and testing consisted of 822 subjects (472 AD and 350 MCI). The validation was performed on an independent dataset from La Fe University and Polytechnic Hospital. This dataset contained 90 subjects with MCI, 71 of them developed a neurodegenerative disease (64 AD, 4 FTD and 3 DLB) while 19 did not associate any neurodegenerative disease. The model had 79% accuracy, 88% sensitivity and 71% specificity in the identification of patients with neurodegenerative diseases tested on the 10% ADNI dataset, achieving an area under the receiver operating characteristic curve (AUC) of 0.90. On the external validation, the model preserved 80% balanced accuracy, 75% sensitivity, 84% specificity and 0.86 AUC. This binary classifier model based on FDG PET images allows the early prediction of neurodegenerative diseases in MCI patients in standard clinical settings with an overall 80% classification balanced accuracy.
引用
收藏
相关论文
empty
未找到相关数据