TY - JOUR
T1 - Dual attention mechanisms with patch-level significance embedding for ischemic stroke classification in brain CT images
AU - Inamdar, Mahesh Anil
AU - Gudigar, Anjan
AU - Raghavendra, U.
AU - Salvi, Massimo
AU - Raj, Nithin
AU - Pooja, J.
AU - Hegde, Ajay
AU - Menon, Girish R.
AU - Rajendra Acharya, U.
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/1
Y1 - 2025/1
N2 - Stroke is currently a major contributor to disability and mortality across the globe, with ischemic stroke being the most predominant subtype. Accurate and timely diagnosis is critical for effective treatment. This study introduces a novel deep learning framework that leverages patch-level significance analysis for precise identification of ischemic strokes in Computed Tomography (CT) images. Our approach integrates a dual attention mechanism dynamic and cross attention with hybrid convolutional kernels to analyze the relative importance of brain regions in stroke diagnosis. The proposed architecture captures both fine-grained and contextual features to identify significant regions through attention-weighted feature embedding. The framework is evaluated on a dataset of 2023 CT of four different classes (i.e., acute: 361, chronic: 267, subacute: 382, and normal: 1013 images), employing both four and nine non-overlapping patch configurations. Experimental results demonstrate that the light gradient boosted machine classifier achieved the highest patch identification accuracy of 94.81 % and the extra tree classifier achieved an accuracy of 99.51 % for classification using 4-patch configuration analysis. The study highlights the importance of features obtained from dense layers in mitigating overfitting and improving generalization. In addition, the study reveals the potential of attention modules with interpretable factors for patch identification of cerebral infarction, suggesting the potential of artificial intelligence in aiding medical diagnosis.
AB - Stroke is currently a major contributor to disability and mortality across the globe, with ischemic stroke being the most predominant subtype. Accurate and timely diagnosis is critical for effective treatment. This study introduces a novel deep learning framework that leverages patch-level significance analysis for precise identification of ischemic strokes in Computed Tomography (CT) images. Our approach integrates a dual attention mechanism dynamic and cross attention with hybrid convolutional kernels to analyze the relative importance of brain regions in stroke diagnosis. The proposed architecture captures both fine-grained and contextual features to identify significant regions through attention-weighted feature embedding. The framework is evaluated on a dataset of 2023 CT of four different classes (i.e., acute: 361, chronic: 267, subacute: 382, and normal: 1013 images), employing both four and nine non-overlapping patch configurations. Experimental results demonstrate that the light gradient boosted machine classifier achieved the highest patch identification accuracy of 94.81 % and the extra tree classifier achieved an accuracy of 99.51 % for classification using 4-patch configuration analysis. The study highlights the importance of features obtained from dense layers in mitigating overfitting and improving generalization. In addition, the study reveals the potential of attention modules with interpretable factors for patch identification of cerebral infarction, suggesting the potential of artificial intelligence in aiding medical diagnosis.
UR - https://www.scopus.com/pages/publications/105012530373
UR - https://www.scopus.com/pages/publications/105012530373#tab=citedBy
U2 - 10.1016/j.imu.2025.101678
DO - 10.1016/j.imu.2025.101678
M3 - Article
AN - SCOPUS:105012530373
SN - 2352-9148
VL - 57
JO - Informatics in Medicine Unlocked
JF - Informatics in Medicine Unlocked
M1 - 101678
ER -