Research Article

Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis

Volume: 1 Number: 1 May 30, 2024
  • Minh Tuan Pham
  • Mouloud Adel *
  • Eric Guedj
  • Linh Trung Nguyen
EN

Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis

Abstract

This study introduces a novel method for constructing multi-scale individual brain networks from static Fluorodeoxyglucose Positron Emission Tomography (FDG-PET) images, with a primary focus on diagnosing Alzheimer’s Disease (AD). Using Schaefer atlases, we partition the brain image into distinct regions, treating them as nodes in the graph. Subsequently, the Kernel Density Estimation (KDE) and Wasserstein Distance (WD) algorithms are used to estimate similarities between brain regions, forming graph connections. Addressing limitations inherent in fixed KDE settings, we propose employing several methods: the interquartile range, Sturges’, and Freedman-Diaconis rules, to optimize KDE settings. WD, renowned for its ability to capture both probability and spatial differences, is used to enhance the comparison of similarities among graph nodes. The effectiveness of our method is validated using the ADNI dataset. Connectivity analysis across diagnostic groups–Cognitive Normal (CN), Mild Cognitive Impairment (MCI), and AD–reveals disruptions in information transmission within the FDG-PET based brain network of MCI and AD subjects, compared to CN. Our findings support the effectiveness of KDE and WD in constructing multi-scale individual brain networks from FDGPET images. This method shows promise for applications in other brain disorders, enabling personalized diagnosis.

Keywords

References

  1. C. Patterson, C, (2018). World Alzheimer Report 2018: The State of the Art of Dementia Research. Alzheimer’s Disease International, London
  2. Alberdi, A, Aztiria, A, Basarab, A, (2016). On the early diagnosis of Alzheimers Disease from multimodal signals: A survey. Artificial Intelligence in Medicine, vol. 71, pp. 1-29, 7.
  3. Guedj, E et al, (2022). EANM procedure guidelines for brain PET imaging using [18 F] FDG, version 3. European Journal of Nuclear Medicine and Molecular Imaging, pp. 1-20, 2022.
  4. Huang SY, Hsu JL, Lin KJ, Liu HL, Wey SP, Hsiao IT, (2018). Characteristic patterns of inter- and intra-hemispheric metabolic connectivity in patients with stable and progressive mild cognitive impairment and Alzheimer’s disease. Scientific Reports, vol. 8, 9.
  5. Yao, Z, Hu, B, Chen, X, Xie, Y, Gutknecht, J, D. Majoe, D, (2017). Learning Metabolic Brain Networks in MCI and AD by Robustness and Leave-One-Out Analysis: An FDG-PET Study. American Journal of Alzheimer’s Disease & Other Dementias, vol. 33, p. 42–54, 9.
  6. Wang, M, Jiang, J, Yan, Z, Alberts, I, Ge, J, Zhang, H, Zuo, C, Yu, J, Rominger, A, Shi, F, (2020). Individual brain metabolic connectome indicator based on Kullback-Leibler Divergence Similarity Estimation predicts progression from mild cognitive impairment to Alzheimer’s dementia. European Journal of Nuclear Medicine and Molecular Imaging, vol. 47, p. 2753–2764, 4.
  7. Huang, SY, Hsu, JL, Lin, KJ, Hsiao, IT, (2020). A Novel Individual Metabolic Brain Network for 18F-FDG PET Imaging. Frontiers in Neuroscience, vol. 14, 5.
  8. Li, W, Tang, Y, Peng, L, Wang, Z, Hu, S, Gao, X, (2023). The reconfiguration pattern of individual brain metabolic connectome for Parkinson’s disease identification. MedComm, vol.4, no.4, p.e305, 2023, doi: 10.1002/mco2.305.

Details

Primary Language

English

Subjects

Bioinformatics

Journal Section

Research Article

Authors

Minh Tuan Pham This is me
France

Eric Guedj This is me
France

Linh Trung Nguyen This is me
Vietnam

Publication Date

May 30, 2024

Submission Date

May 10, 2024

Acceptance Date

May 29, 2024

Published in Issue

Year 2024 Volume: 1 Number: 1

APA
Pham, M. T., Adel, M., Guedj, E., & Nguyen, L. T. (2024). Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis. Transactions on Computer Science and Applications, 1(1), 31-39. https://izlik.org/JA43JP72EH
AMA
1.Pham MT, Adel M, Guedj E, Nguyen LT. Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis. TCSA. 2024;1(1):31-39. https://izlik.org/JA43JP72EH
Chicago
Pham, Minh Tuan, Mouloud Adel, Eric Guedj, and Linh Trung Nguyen. 2024. “Multi-Scale Metabolic Brain Connectivity Construction: Application to Alzheimer’s Disease Computer-Aided Diagnosis”. Transactions on Computer Science and Applications 1 (1): 31-39. https://izlik.org/JA43JP72EH.
EndNote
Pham MT, Adel M, Guedj E, Nguyen LT (May 1, 2024) Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis. Transactions on Computer Science and Applications 1 1 31–39.
IEEE
[1]M. T. Pham, M. Adel, E. Guedj, and L. T. Nguyen, “Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis”, TCSA, vol. 1, no. 1, pp. 31–39, May 2024, [Online]. Available: https://izlik.org/JA43JP72EH
ISNAD
Pham, Minh Tuan - Adel, Mouloud - Guedj, Eric - Nguyen, Linh Trung. “Multi-Scale Metabolic Brain Connectivity Construction: Application to Alzheimer’s Disease Computer-Aided Diagnosis”. Transactions on Computer Science and Applications 1/1 (May 1, 2024): 31-39. https://izlik.org/JA43JP72EH.
JAMA
1.Pham MT, Adel M, Guedj E, Nguyen LT. Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis. TCSA. 2024;1:31–39.
MLA
Pham, Minh Tuan, et al. “Multi-Scale Metabolic Brain Connectivity Construction: Application to Alzheimer’s Disease Computer-Aided Diagnosis”. Transactions on Computer Science and Applications, vol. 1, no. 1, May 2024, pp. 31-39, https://izlik.org/JA43JP72EH.
Vancouver
1.Minh Tuan Pham, Mouloud Adel, Eric Guedj, Linh Trung Nguyen. Multi-scale metabolic brain connectivity construction: application to Alzheimer’s disease computer-aided diagnosis. TCSA [Internet]. 2024 May 1;1(1):31-9. Available from: https://izlik.org/JA43JP72EH