Stroke classification from computed tomography scans using 3D convolutional neural network

dc.contributor.authorNeethi, A.S.
dc.contributor.authorNiyas, S.
dc.contributor.authorKannath, S.K.
dc.contributor.authorMathew, J.
dc.contributor.authorAnzar, A.M.
dc.contributor.authorRajan, J.
dc.date.accessioned2026-02-04T12:27:57Z
dc.date.issued2022
dc.description.abstractStroke is a cerebrovascular condition with a significant morbidity and mortality rate and causes physical disabilities for survivors. Once the symptoms are identified, it requires a time-critical diagnosis with the help of the most commonly available imaging techniques. Computed tomography (CT) scans are used worldwide for preliminary stroke diagnosis. It demands the expertise and experience of a radiologist to identify the stroke type, which is critical for initiating the treatment. This work attempts to gather those domain skills and build a model from CT scans to diagnose stroke. The non-contrast computed tomography (NCCT) scan of the brain comprises volumetric images or a 3D stack of image slices. So, a model that aims to solve the problem by targeting a 2D slice may fail to address the volumetric nature. We propose a 3D-based fully convolutional classification model to identify stroke cases from CT images that take into account the contextual longitudinal composition of volumetric data. We formulate a custom pre-processing module to enhance the scans and aid in improving the classification performance. Some of the significant challenges faced by 3D CNN are the less number of training samples, and the number of scans is mostly biased in favor of normal patients. In this work, the limitation of insufficient training volume and class imbalanced data have been rectified with the help of a strided slicing approach. A block-wise design was used to formulate the proposed network, with the initial part focusing on adjusting the dimensionality, at the same time retaining the features. Later on, the accumulated feature maps were effectively learned utilizing bundled convolutions and skip connections. The results of the proposed method were compared against 3D CNN stroke classification models on NCCT, various 3D CNN architectures on other brain imaging modalities, and 3D extensions of some of the classical CNN architectures. The proposed method achieved an improvement of 14.28% in the F1-score over the state-of-the-art 3D CNN stroke classification model. © 2022 Elsevier Ltd
dc.identifier.citationBiomedical Signal Processing and Control, 2022, 76, , pp. -
dc.identifier.issn17468094
dc.identifier.urihttps://doi.org/10.1016/j.bspc.2022.103720
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/22520
dc.publisherElsevier Ltd
dc.subjectBrain mapping
dc.subjectClassification (of information)
dc.subjectConvolution
dc.subjectConvolutional neural networks
dc.subjectDeep learning
dc.subjectDiagnosis
dc.subjectNetwork architecture
dc.subjectVolumetric analysis
dc.subject3d convolutional neural network
dc.subjectClassification models
dc.subjectComputed tomography scan
dc.subjectCondition
dc.subjectConvolutional neural network
dc.subjectMortality rate
dc.subjectNon contrast computed tomography
dc.subjectPhysical disability
dc.subjectStroke classification
dc.subjectComputerized tomography
dc.subjectArticle
dc.subjectbrain hemorrhage
dc.subjectbrain region
dc.subjectcerebrovascular accident
dc.subjectcomparative study
dc.subjectcomputer assisted tomography
dc.subjectcontrolled study
dc.subjectconvolutional neural network
dc.subjectdeep learning
dc.subjectdisease classification
dc.subjectdisease severity
dc.subjectfalse negative result
dc.subjectfalse positive result
dc.subjecthuman
dc.subjectimaging algorithm
dc.subjectneuroimaging
dc.subjectresidual neural network
dc.subjectthree dimensional convolutional neural network
dc.titleStroke classification from computed tomography scans using 3D convolutional neural network

Files

Collections