» Articles » PMID: 37025479

Classification of Multiple Sclerosis Women with Voiding Dysfunction Using Machine Learning: Is Functional Connectivity or Structural Connectivity a Better Predictor?

Overview
Journal BJUI Compass
Date 2023 Apr 7
PMID 37025479
Authors
Affiliations
Soon will be listed here.
Abstract

Introduction: Machine learning (ML) is an established technique that uses sets of training data to develop algorithms and perform data classification without using human intervention/supervision. This study aims to determine how functional and anatomical brain connectivity (FC and SC) data can be used to classify voiding dysfunction (VD) in female MS patients using ML.

Methods: Twenty-seven ambulatory MS individuals with lower urinary tract dysfunction were recruited and divided into two groups (Group 1: voiders [V,  = 14]; Group 2: VD [ = 13]). All patients underwent concurrent functional MRI/urodynamics testing.

Results: Best-performing ML algorithms, with highest area under the curve (AUC), were partial least squares (PLS, AUC = 0.86) using FC alone and random forest (RF) when using SC alone (AUC = 0.93) and combined (AUC = 0.96) as inputs. Our results show 10 predictors with the highest AUC values were associated with FC, indicating that although white matter was affected, new connections may have formed to preserve voiding initiation.

Conclusions: MS patients with and without VD exhibit distinct brain connectivity patterns when performing a voiding task. Our results demonstrate FC (grey matter) is of higher importance than SC (white matter) for this classification. Knowledge of these centres may help us further phenotype patients to appropriate centrally focused treatments in the future.

Citing Articles

Classification of multiple sclerosis women with voiding dysfunction using machine learning: Is functional connectivity or structural connectivity a better predictor?.

Tran K, Salazar B, Boone T, Khavari R, Karmonik C BJUI Compass. 2023; 4(3):277-284.

PMID: 37025479 PMC: 10071087. DOI: 10.1002/bco2.217.

References
1.
Khavari R, Karmonik C, Shy M, Fletcher S, Boone T . Functional Magnetic Resonance Imaging with Concurrent Urodynamic Testing Identifies Brain Structures Involved in Micturition Cycle in Patients with Multiple Sclerosis. J Urol. 2016; 197(2):438-444. PMC: 5497828. DOI: 10.1016/j.juro.2016.09.077. View

2.
Hoeft F, Barnea-Goraly N, Haas B, Golarai G, Ng D, Mills D . More is not always better: increased fractional anisotropy of superior longitudinal fasciculus associated with poor visuospatial abilities in Williams syndrome. J Neurosci. 2007; 27(44):11960-5. PMC: 6673356. DOI: 10.1523/JNEUROSCI.3591-07.2007. View

3.
Shy M, Fung S, Boone T, Karmonik C, Fletcher S, Khavari R . Functional magnetic resonance imaging during urodynamic testing identifies brain structures initiating micturition. J Urol. 2014; 192(4):1149-54. PMC: 5485249. DOI: 10.1016/j.juro.2014.04.090. View

4.
Chari D . Remyelination in multiple sclerosis. Int Rev Neurobiol. 2007; 79:589-620. PMC: 7112255. DOI: 10.1016/S0074-7742(07)79026-8. View

5.
Stoffel J . Contemporary management of the neurogenic bladder for multiple sclerosis patients. Urol Clin North Am. 2010; 37(4):547-57. DOI: 10.1016/j.ucl.2010.06.003. View