Chronic Mild Traumatic Brain Injury: Aberrant Static and Dynamic Connectomic Features Identified Through Machine Learning Model Fusion
- Open Access
- 01-04-2023
- Central Nervous System Trauma
- Research
- Authors
- Nicholas J. Simos
- Katina Manolitsi
- Andrea I. Luppi
- Antonios Kagialis
- Marios Antonakakis
- Michalis Zervakis
- Despina Antypa
- Eleftherios Kavroulakis
- Thomas G. Maris
- Antonios Vakis
- Emmanuel A. Stamatakis
- Efrosini Papadaki
- Published in
- Neuroinformatics | Issue 2/2023
Abstract
Traumatic Brain Injury (TBI) is a frequently occurring condition and approximately 90% of TBI cases are classified as mild (mTBI). However, conventional MRI has limited diagnostic and prognostic value, thus warranting the utilization of additional imaging modalities and analysis procedures. The functional connectomic approach using resting-state functional MRI (rs-fMRI) has shown great potential and promising diagnostic capabilities across multiple clinical scenarios, including mTBI. Additionally, there is increasing recognition of a fundamental role of brain dynamics in healthy and pathological cognition. Here, we undertake an in-depth investigation of mTBI-related connectomic disturbances and their emotional and cognitive correlates. We leveraged machine learning and graph theory to combine static and dynamic functional connectivity (FC) with regional entropy values, achieving classification accuracy up to 75% (77, 74 and 76% precision, sensitivity and specificity, respectively). As compared to healthy controls, the mTBI group displayed hypoconnectivity in the temporal poles, which correlated positively with semantic (r = 0.43, p < 0.008) and phonemic verbal fluency (r = 0.46, p < 0.004), while hypoconnectivity in the right dorsal posterior cingulate correlated positively with depression symptom severity (r = 0.54, p < 0.0006). These results highlight the importance of residual FC in these regions for preserved cognitive and emotional function in mTBI. Conversely, hyperconnectivity was observed in the right precentral and supramarginal gyri, which correlated negatively with semantic verbal fluency (r=-0.47, p < 0.003), indicating a potential ineffective compensatory mechanism. These novel results are promising toward understanding the pathophysiology of mTBI and explaining some of its most lingering emotional and cognitive symptoms.
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- Title
- Chronic Mild Traumatic Brain Injury: Aberrant Static and Dynamic Connectomic Features Identified Through Machine Learning Model Fusion
- Authors
-
Nicholas J. Simos
Katina Manolitsi
Andrea I. Luppi
Antonios Kagialis
Marios Antonakakis
Michalis Zervakis
Despina Antypa
Eleftherios Kavroulakis
Thomas G. Maris
Antonios Vakis
Emmanuel A. Stamatakis
Efrosini Papadaki
- Publication date
- 01-04-2023
- Publisher
- Springer US
- Published in
-
Neuroinformatics / Issue 2/2023
Print ISSN: 1539-2791
Electronic ISSN: 1559-0089 - DOI
- https://doi.org/10.1007/s12021-022-09615-1
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