Columbia University Irving Medical Center
Neurology

Author Of 2 Presentations

Machine Learning/Network Science Poster Presentation

P0002 - Applying machine learning to multimodal neuroimaging data to predict visual episodic memory performance in multiple sclerosis  (ID 1530)

Speakers
Presentation Number
P0002
Presentation Topic
Machine Learning/Network Science

Abstract

Background

Episodic memory (EM) impairment is common in MS. The thalamus, hippocampus, fornix and cingulum are important hubs in the Papez circuit involved in EM processing. The extent to which MS-related early structural and functional changes in these regions relate to visual EM is not known.

Objectives

To build a brain model which represents multimodal MRI measures mostly associated with visual EM processing in early MS using a machine learning approach (Elastic Net-EN).

Methods

A computerized nonverbal test of visual episodic memory (CANTAB Paired Associate Learning-PAL) was administered to 180 MS patients (RADIEMS cohort: 162 relapsing remitting, 18 clinically isolated syndrome, 123 female, mean age = 34.4 ± 7.5, mean years since diagnosis = 2.1 ± 1.4, mean premorbid intelligence = 108.3 ± 8.8). Raw scores of first trial memory were selected for statistical assessment. Neuroimaging data were acquired via a 3T MRI scanner. Lesion load over 12 regions across the brain, volume of bilateral 12 hippocampal subfields, 25 thalamic nuclei, functional and structural connectivity (assessed by fractional anisotropy and mean diffusivity) between bilateral subiculum of hippocampus and anterior thalamic nuclei and structural connectivity of fornix and cingulum were used to build a model predicting EM. Age, sex, IQ and EDSS scores were also included in the model. Five-fold cross-validation was used to train and test the model with 50 repetitions. Pearson’s correlation (r) was used to assess the univariate relationships between the continuous variables and model’s prediction accuracy.

Results

PAL test score was positively correlated with IQ (r = 0.24, p < 0.05), and negatively correlated with age and EDSS score (r = -0.25 and r = -0.23, p < 0.05). The correlation between the model’s predicted memory and actual memory scores was 0.26 ± 0.14, indicating moderate performance similar to pevious literature predicting cognitive scores from imaging variables. The most important MRI predictors of better memory were right hippocampus molecular layer and right thalamus parataenial nucleus volume, functional connectivity between left thalamus anteroventral nuclei and left hippocampus subiculum, left thalamus medial pulvinar and right hippocampus CA4 volume and lesion load in medulla and limbic lobe.

Conclusions

Atrophy and lesions in select regions of Papez Circuit are important imaging predictors of memory in early MS. A next essential step to understanding disease-specificity of these findings is comparison to matched health controls.

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Clinical Outcome Measures Poster Presentation

P0165 - Social Matters: Social support is linked to mental health, quality of life, and motor function in multiple sclerosis (ID 1219)

Speakers
Presentation Number
P0165
Presentation Topic
Clinical Outcome Measures

Abstract

Background

We are social animals who naturally seek the companionship of others as an essential part of our physical and psychological well-being. Patients with multiple sclerosis (MS) who are dealing with a chronic and often debilitating disease are at higher risk for social isolation, which may be particularly detrimental to their health.

Objectives

We investigated associations of social support with mental health, cognition, and motor functioning in cross-sectional data from two independent cohorts of patients with MS. We further explored sex differences in these relationships, based on a bioevolutionary theoretical justification.

Methods

Social support was assessed in 185 recently diagnosed patients (RADIEMS cohort), and in an independent validation sample (MEM CONNECT cohort, n = 62). Patients also completed a comprehensive neurobehavioral evaluation including measures of mental health, fatigue, quality of life, cognition and motor function. Correlations tested links between social support and these variables, along with potential gender differences.

Results

In both samples, higher social support was associated with better mental health, quality of life, subjective cognitive function, and less fatigue. In the RADIEMS cohort, correlations showed positive associations between social support and motor functions. The most robust relationships were observed for gross motor functions (gait, grip strength), especially in women.

Conclusions

These findings highlight associations of social support to overall psychological health and motor functioning in persons with MS, underlining the potential opportunity of evaluating and promoting social engagement as a novel treatment strategy.

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Presenter Of 1 Presentation

Machine Learning/Network Science Poster Presentation

P0002 - Applying machine learning to multimodal neuroimaging data to predict visual episodic memory performance in multiple sclerosis  (ID 1530)

Speakers
Presentation Number
P0002
Presentation Topic
Machine Learning/Network Science

Abstract

Background

Episodic memory (EM) impairment is common in MS. The thalamus, hippocampus, fornix and cingulum are important hubs in the Papez circuit involved in EM processing. The extent to which MS-related early structural and functional changes in these regions relate to visual EM is not known.

Objectives

To build a brain model which represents multimodal MRI measures mostly associated with visual EM processing in early MS using a machine learning approach (Elastic Net-EN).

Methods

A computerized nonverbal test of visual episodic memory (CANTAB Paired Associate Learning-PAL) was administered to 180 MS patients (RADIEMS cohort: 162 relapsing remitting, 18 clinically isolated syndrome, 123 female, mean age = 34.4 ± 7.5, mean years since diagnosis = 2.1 ± 1.4, mean premorbid intelligence = 108.3 ± 8.8). Raw scores of first trial memory were selected for statistical assessment. Neuroimaging data were acquired via a 3T MRI scanner. Lesion load over 12 regions across the brain, volume of bilateral 12 hippocampal subfields, 25 thalamic nuclei, functional and structural connectivity (assessed by fractional anisotropy and mean diffusivity) between bilateral subiculum of hippocampus and anterior thalamic nuclei and structural connectivity of fornix and cingulum were used to build a model predicting EM. Age, sex, IQ and EDSS scores were also included in the model. Five-fold cross-validation was used to train and test the model with 50 repetitions. Pearson’s correlation (r) was used to assess the univariate relationships between the continuous variables and model’s prediction accuracy.

Results

PAL test score was positively correlated with IQ (r = 0.24, p < 0.05), and negatively correlated with age and EDSS score (r = -0.25 and r = -0.23, p < 0.05). The correlation between the model’s predicted memory and actual memory scores was 0.26 ± 0.14, indicating moderate performance similar to pevious literature predicting cognitive scores from imaging variables. The most important MRI predictors of better memory were right hippocampus molecular layer and right thalamus parataenial nucleus volume, functional connectivity between left thalamus anteroventral nuclei and left hippocampus subiculum, left thalamus medial pulvinar and right hippocampus CA4 volume and lesion load in medulla and limbic lobe.

Conclusions

Atrophy and lesions in select regions of Papez Circuit are important imaging predictors of memory in early MS. A next essential step to understanding disease-specificity of these findings is comparison to matched health controls.

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