IVCVJul 10, 2023

Identification of Hemorrhage and Infarct Lesions on Brain CT Images using Deep Learning

arXiv:2307.04425v12 citationsh-index: 9
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This work addresses the problem of automating lesion detection in brain CT scans for healthcare facilities, but it appears incremental as it builds on existing deep learning methods in medical imaging.

The study tackled the challenge of identifying intracranial hemorrhage and infarct lesions on brain CT images by evaluating a deep learning-based algorithm, achieving results that demonstrate its potential and limitations for integration into routine clinical workflows.

Head Non-contrast computed tomography (NCCT) scan remain the preferred primary imaging modality due to their widespread availability and speed. However, the current standard for manual annotations of abnormal brain tissue on head NCCT scans involves significant disadvantages like lack of cutoff standardization and degeneration identification. The recent advancement of deep learning-based computer-aided diagnostic (CAD) models in the multidisciplinary domain has created vast opportunities in neurological medical imaging. Significant literature has been published earlier in the automated identification of brain tissue on different imaging modalities. However, determining Intracranial hemorrhage (ICH) and infarct can be challenging due to image texture, volume size, and scan quality variability. This retrospective validation study evaluated a DL-based algorithm identifying ICH and infarct from head-NCCT scans. The head-NCCT scans dataset was collected consecutively from multiple diagnostic imaging centers across India. The study exhibits the potential and limitations of such DL-based software for introduction in routine workflow in extensive healthcare facilities.

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