Assessing the Impact of Preprocessing Pipelines on fMRI Based Autism Spectrum Disorder Classification: ABIDE II Results

被引:0
|
作者
Bazay, Fatima Ez-zahraa [1 ]
El Maliani, Ahmed Drissi [1 ]
机构
[1] Mohammed V Univ Rabat, Fac Sci Rabat, LRIT, Rabat, Morocco
关键词
resting-state fMRI; preprocessing; ABIDE II; motion correction; slice timing; normalization; smoothing; ASD classification;
D O I
10.1007/978-3-031-62495-7_35
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Resting-state functional MRI (rs-fMRI), a tool for assessing the brain's spontaneous activity, plays a crucial role in understanding functional connectivity, contingent on the precision of Blood Oxygen Level Dependent (BOLD) signal processing. At the forefront of this process lies preprocessing as a fundamental step in the analysis of resting-state fMRI data, enabling any subsequent investigations. This research focuses on assessing the impact of three distinct preprocessing methods on the classification of resting-state fMRI data, utilizing a range of classifiers including Support Vector Classifier with radial basis function (SVCrbf), Linear Support Vector Classifier (LinearSVC), ridge, K-Nearest Neighbors (KNN), Logistic Regression (LR), Decision Trees (DT), Random Forests (RF), and Adaptive Boosting (AdaBoost). The objective is to understand how the order and efficiency of these preprocessing steps influence the classification of Autism spectrum disorder (ASD). We conduct standard preprocessing steps on the fMRI data, including slice-timing, realignment, segmentation, co-registration, normalization, and smoothing methods. Additionally, the brain was parcellated into AAL and CC200 atlases. The evaluation, involving 1076 subjects from the ABIDE II database, represents the first application of these preprocessing methods to this dataset. Results reveal that the choice and the order of preprocessing steps significantly impact the ability to classify ASD accurately. Notably, the preprocessing strategy involving dropping the first 10 volumes, realignment, slice timing, normalization, and smoothing, yielded the best accuracy with the Ridge classifier and AAL atlas, achieving an accuracy of 65.42%, specificity of 70.73%, and AUC of 68.04%. The findings highlight the significant impact of selected preprocessing methods on the accuracy of functional connectivity classifications, underlining the importance of strategic method selection to achieve the most favorable outcomes in ASD classification.
引用
收藏
页码:463 / 477
页数:15
相关论文
共 50 条
  • [1] AUTISM SPECTRUM DISORDER (ASD) CLASSIFICATION WITH THREE TYPES OF CORRELATIONS BASED ON ABIDE I DATA
    Wang, Donglin
    Yang, Xin
    Ding, Wandi
    [J]. MATHEMATICAL FOUNDATIONS OF COMPUTING, 2023,
  • [2] Multi-atlas classification of autism spectrum disorder with hinge loss trained deep architectures: ABIDE I results
    Epalle, Thomas Martial
    Song, Yuqing
    Liu, Zhe
    Lu, Hu
    [J]. APPLIED SOFT COMPUTING, 2021, 107
  • [3] An Early Detection of Autism Spectrum Disorder Using PDNN and ABIDE I&II Dataset
    Lamani, Manjunath Ramanna
    Benadit, P. Julian
    [J]. ARTIFICIAL INTELLIGENCE: THEORY AND APPLICATIONS, VOL 2, AITA 2023, 2024, 844 : 295 - 310
  • [4] Functional connectivity magnetic resonance imaging classification of autism spectrum disorder using the multisite ABIDE dataset
    Yang, Xin
    Islam, Mohammad Samiul
    Khaled, A. M. Arefin
    [J]. 2019 IEEE EMBS INTERNATIONAL CONFERENCE ON BIOMEDICAL & HEALTH INFORMATICS (BHI), 2019,
  • [5] Gaze -based classification of autism spectrum disorder
    Fabiano, Diego
    Canavan, Shaun
    Agazzi, Heather
    Hinduja, Saurabh
    Goldgof, Dmitry
    [J]. PATTERN RECOGNITION LETTERS, 2020, 135 (135) : 204 - 212
  • [6] Integrating genomic and resting State fMRI for efficient autism spectrum disorder classification
    Lu, Peixin
    Li, Xin
    Hu, Lianting
    Lu, Long
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (14) : 19183 - 19194
  • [7] Integrating genomic and resting State fMRI for efficient autism spectrum disorder classification
    Peixin Lu
    Xin Li
    Lianting Hu
    Long Lu
    [J]. Multimedia Tools and Applications, 2022, 81 : 19183 - 19194
  • [8] Deep Learning-based Classification of Autism Spectrum Disorder Using Resting State fMRI Data
    Firouzi, M.H.
    Fadaei, S.
    [J]. International Journal of Engineering, Transactions A: Basics, 2025, 38 (04): : 785 - 795
  • [9] Assessing the impact of medically assisted reproduction on autism spectrum disorder risk
    Zamstein, Omri
    Wainstock, Tamar
    Gutvirtz, Gil
    Sheiner, Eyal
    [J]. JOURNAL OF ASSISTED REPRODUCTION AND GENETICS, 2024,
  • [10] LSTM-based Electroencephalogram Classification on Autism Spectrum Disorder
    Ali, N. A.
    Syafeeza, A. R.
    Jaafar, A. S.
    Shamsuddin, S.
    Nor, Norazlin Kamal
    [J]. INTERNATIONAL JOURNAL OF INTEGRATED ENGINEERING, 2021, 13 (06): : 321 - 329