A Contrast Synthesized Thalamic Nuclei Segmentation Scheme using Convolutional Neural Networks
Lavanya Umapathy, Mahesh Bharath Keerthivasan, Natalie M. Zahr, Ali, Bilgin, Manojkumar Saranathan

TL;DR
This study develops and compares CNN-based methods for thalamic nuclei segmentation from conventional MPRAGE images, demonstrating that synthesized contrast improves accuracy and clinical utility, especially in detecting atrophy in alcohol use disorder patients.
Contribution
The paper introduces a synthesized contrast CNN approach for thalamic nuclei segmentation, enhancing accuracy over native contrast methods using conventional MRI images.
Findings
SCS network achieved higher Dice scores in specific nuclei.
SCS provided more accurate volume measurements.
Detected atrophy in AUD patients consistent with prior studies.
Abstract
Thalamic nuclei have been implicated in several neurological diseases. WMn-MPRAGE images have been shown to provide better intra-thalamic nuclear contrast compared to conventional MPRAGE images but the additional acquisition results in increased examination times. In this work, we investigated 3D Convolutional Neural Network (CNN) based techniques for thalamic nuclei parcellation from conventional MPRAGE images. Two 3D CNNs were developed and compared for thalamic nuclei parcellation using MPRAGE images: a) a native contrast segmentation (NCS) and b) a synthesized contrast segmentation (SCS) using WMn-MPRAGE images synthesized from MPRAGE images. We trained the two segmentation frameworks using MPRAGE images (n=35) and thalamic nuclei labels generated on WMn-MPRAGE images using a multi-atlas based parcellation technique. The segmentation accuracy and clinical utility were evaluated on a…
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Taxonomy
TopicsNeurological disorders and treatments · Advanced Neuroimaging Techniques and Applications · Functional Brain Connectivity Studies
