Effect of sample size for normal database on diagnostic performance of brain FDG PET for the detection of Alzheimer's disease using automated image analysis

被引:28
|
作者
Chen, Wei-Ping [1 ]
Samuraki, Miharu [2 ]
Yanase, Daisuke [2 ]
Shima, Keisuke [2 ,3 ]
Takeda, Nozomi [1 ]
Ono, Kenjiro [2 ]
Yoshita, Mitsuhiro [2 ]
Nishimura, Shintaro [1 ]
Yamada, Masahitio [2 ]
Matsunari, Ichiro [1 ]
机构
[1] Med & Pharmacol Res Ctr Fdn, Hakui, Ishikawa 9250613, Japan
[2] Kanazawa Univ, Dept Neurol & Neurobiol Aging, Grad Sch Med Sci, Kanazawa, Ishikawa 920, Japan
[3] Iou Natl Univ, Kanazawa, Ishikawa, Japan
关键词
Alzheimer's disease; F-18-FDG PET; normal database; sample size;
D O I
10.1097/MNM.0b013e3282f3fa76
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objective To investigate the relationship between the sample size for a normal database (NDB) and diagnostic performance of FDG PET using three-dimensional stereotactic surface projection for the detection of Alzheimer's disease. Methods We generated nine NDB sets consisting of 4, 6, 8,10, 20, 30, 40, 50 and 60 normal subjects. In order to assess the diagnostic performance using these NDBs to distinguish Alzheimer's disease patients from normal subjects, we recruited 52 patients with probable Alzheimer's disease (25 males, 27 females; mean age, 66.8 +/- 8.1 years) and 50 normal subjects (24 males, 26 females; mean age, 65.7 +/- 9.4 years). A receiver operating characteristic (ROC) analysis was performed for comparison of diagnostic accuracy among ND13 sets. Results Small N DBs (n <= 10) yielded poor quality of mean and SD images as compared with large NDBs (n >= 20). The ROC curves of the smaller group varied inconsistently, whereas those of the larger group were nearly superimposable. The area under the ROC curve (AUC) of the NDBs with sample size 6 (0.911) or 8 (0.929) was significantly smaller than that of the largest NDB (n = 60, 0.956). The AUCs of the larger group did not fall below 0.950, whereas AUCs of the smaller subgroup never exceeded 0.950. Conclusions Our data indicate that the sample size for an NDB affects the diagnostic performance of FDG PET using automated statistical approach, and that inclusion of at least 10 subjects is recommended, and 20 seems to be preferable for generating NDBs, although even a small NDB may provide clinically relevant results.
引用
收藏
页码:270 / 276
页数:7
相关论文
共 50 条
  • [31] Regional analysis of FDG and PIB-PET images in normal aging, mild cognitive impairment, and Alzheimer’s disease
    Yi Li
    Juha O. Rinne
    Lisa Mosconi
    Elizabeth Pirraglia
    Henry Rusinek
    Susan DeSanti
    Nina Kemppainen
    Kjell Någren
    Byeong-Chae Kim
    Wai Tsui
    Mony J. de Leon
    European Journal of Nuclear Medicine and Molecular Imaging, 2008, 35 : 2169 - 2181
  • [32] Regional analysis of FDG and PIB-PET images in normal aging, mild cognitive impairment, and Alzheimer's disease
    Li, Yi
    Rinne, Juha O.
    Mosconi, Lisa
    Pirraglia, Elizabeth
    Rusinek, Henry
    DeSanti, Susan
    Kemppainen, Nina
    Nagren, Kjell
    Kim, Byeong-Chae
    Tsui, Wai
    de Leon, Mony J.
    EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2008, 35 (12) : 2169 - 2181
  • [33] Performance of FDG PET for Detection of Alzheimer's Disease in Two Independent Multicentre Samples (NEST-DD and ADNI)
    Haense, C.
    Herholz, K.
    Jagust, W. J.
    Heiss, W. D.
    DEMENTIA AND GERIATRIC COGNITIVE DISORDERS, 2009, 28 (03) : 259 - 266
  • [34] Correlation of Early-Phase F-18 Florapronal PET with F-18 FDG PET in Alzheimer’s Disease and Normal Brain
    Jieun Jeong
    Young Jin Jeong
    Kyung Won Park
    Do-Young Kang
    Nuclear Medicine and Molecular Imaging, 2019, 53 : 328 - 333
  • [35] Correlation of Early-Phase F-18 Florapronal PET with F-18 FDG PET in Alzheimer's Disease and Normal Brain
    Jeong, Jieun
    Jeong, Young Jin
    Park, Kyung Won
    Kang, Do-Young
    NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2019, 53 (05) : 328 - 333
  • [36] FDG-PET Image Classification in Alzheimer's Disease: from Traditional Visual Analysis to Advanced Transfer Learning
    Tripathi, Shailendra Mohan
    Mcneil, Christopher J.
    Staff, Roger T.
    Murray, Alison D.
    Wischik, Claude M.
    Schelter, Bjoern
    Waiter, Gordan D.
    NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2025,
  • [37] A Comparison of Two Statistical Mapping Tools for Automated Brain FDG-PET Analysis in Predicting Conversion to Alzheimer's Disease in Subjects with Mild Cognitive Impairment
    Garibotto, Valentina
    Trombella, Sara
    Antelmi, Luigi
    Bosco, Paolo
    Redolfi, Alberto
    Tabouret-Viaud, Claire
    Rager, Olivier
    Gold, Gabriel
    Giannakopoulos, Panteleimon
    Morbelli, Silvia
    Nobili, Flavio
    Perneczky, Robert
    Didic, Mira
    Guedj, Eric
    Drzezga, Alexander
    Ossenkoppele, Rik
    Van Berckel, Bart
    Ratib, Osman
    Frisoni, Giovanni B.
    CURRENT ALZHEIMER RESEARCH, 2020, 17 (13) : 1186 - 1194
  • [38] Principal component analysis of brain metabolism in symptomatic Alzheimer's disease patients: A PET-FDG study.
    Demey, Ignacio
    Calandri, Ismael
    Bergamo, Yanina
    Mendez, Patricio Chrem
    Urrutia, Leandro
    Falasco, German
    Campos, Jorge
    Sevlever, Gustavo
    Vazquez, Silvia
    Allegri, Ricardo
    NEUROLOGY, 2020, 94 (15)
  • [39] Alzheimer's disease detection with objective statistical evaluation of FDG-PET brain scans: essential methodology for early identification
    Patterson, James, II
    Minagar, Alireza
    Natarajan, Nirupama
    Takalkar, Amol
    FUTURE NEUROLOGY, 2010, 5 (02) : 259 - 276
  • [40] Predictive Diagnostic Analysis for Early Detection of Alzheimer's disease Using Machine Learning
    Veena, K. C.
    Priya, R. Kavi
    Sumathi, D.
    JOURNAL OF ALGEBRAIC STATISTICS, 2022, 13 (01) : 586 - 592