Hippocampus Segmentation Using U-Net Convolutional Network from Brain Magnetic Resonance Imaging (MRI)

Hippocampus is a part of the limbic system in human brain that plays an important role in forming memories and dealing with intellectual abilities. In most of the neurological disorders related to dementia, such as, Alzheimer’s disease, hippocampus is one of the earliest affected regions. Because th...

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Veröffentlicht in:Journal of digital imaging 2022-08, Vol.35 (4), p.893-909
Hauptverfasser: Hazarika, Ruhul Amin, Maji, Arnab Kumar, Syiem, Raplang, Sur, Samarendra Nath, Kandar, Debdatta
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Sprache:eng
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Zusammenfassung:Hippocampus is a part of the limbic system in human brain that plays an important role in forming memories and dealing with intellectual abilities. In most of the neurological disorders related to dementia, such as, Alzheimer’s disease, hippocampus is one of the earliest affected regions. Because there are no effective dementia drugs, an ambient assisted living approach may help to prevent or slow the progression of dementia. By segmenting and analyzing the size/shape of hippocampus, it may be possible to classify the early dementia stages. Because of complex structure, traditional image segmentation techniques can’t segment hippocampus accurately. Machine learning (ML) is a well known tool in medical image processing that can predict and deliver the outcomes accurately by learning from it’s previous results. Convolutional Neural Networks (CNN) is one of the most popular ML algorithms. In this work, a U-Net Convolutional Network based approach is used for hippocampus segmentation from 2D brain images. It is observed that, the original U-Net architecture can segment hippocampus with an average performance rate of 93.6%, which outperforms all other discussed state-of-arts. By using a filter size of 3 × 3 , the original U-Net architecture performs a sequence of convolutional processes. We tweaked the architecture further to extract more relevant features by replacing all 3 × 3 kernels with three alternative kernels of sizes 1 × 1 , 3 × 3 , and 5 × 5 . It is observed that, the modified architecture achieved an average performance rate of 96.5%, which outperforms the original U-Net model convincingly.
ISSN:0897-1889
1618-727X
1618-727X
DOI:10.1007/s10278-022-00613-y