TY - JOUR
T1 - A synaptic deep tumor sense predictor system for brain tumor detection and classification
AU - Dutta, Ashit Kumar
AU - Bokhari, Yaseen
AU - Alghayadh, Faisal
AU - Alsubai, Shtwai
AU - Alhalabi, Hadeel Rami Sami
AU - Umer, Mohammed
AU - Sait, Abdul Rahaman Wahab
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/6
Y1 - 2025/6
N2 - Accurate brain tumor detection is essential for prompt treatment and better patient outcomes. Nevertheless, segmentation errors and classification constraints plague current approaches. With the goal of improving brain tumor detection accuracy and dependability, this research holds hope for improved patient outcomes and a greater understanding of tumor pathology. This paper introduces a novel DeepNeuroXpert (DN-XPert) model to segment and classify brain tumors, accompanied by three other models: the NSAS-Net or Nested Self-Attentive Segmentation Network (NSAS-Net), AI2CF Classification that is Attention-Integrated Inception Capsule Fusion (AI2CF) Classification, and WPSO for Parameter Tuning which stands for Wombat-Pelican Synergy Optimization. Our research is focused on addressing the challenges in medical image analysis. We propose new ways to enhance precision and dependability of brain tumor detection using DN-Xpert, a technique that uses advanced deep learning methods for accurate segmentation and classification of tumors in the brain. Furthermore, the DN-Xpert and its partner models have shown high-level performance by exceeding benchmarks with accuracy that goes up to 99.4 % and precision, recall, and F1-score metrics reaching a maximum of 99 %. This outstanding accuracy emphasizes the potential power of our unique approaches in changing how we detect and classify brain tumors.
AB - Accurate brain tumor detection is essential for prompt treatment and better patient outcomes. Nevertheless, segmentation errors and classification constraints plague current approaches. With the goal of improving brain tumor detection accuracy and dependability, this research holds hope for improved patient outcomes and a greater understanding of tumor pathology. This paper introduces a novel DeepNeuroXpert (DN-XPert) model to segment and classify brain tumors, accompanied by three other models: the NSAS-Net or Nested Self-Attentive Segmentation Network (NSAS-Net), AI2CF Classification that is Attention-Integrated Inception Capsule Fusion (AI2CF) Classification, and WPSO for Parameter Tuning which stands for Wombat-Pelican Synergy Optimization. Our research is focused on addressing the challenges in medical image analysis. We propose new ways to enhance precision and dependability of brain tumor detection using DN-Xpert, a technique that uses advanced deep learning methods for accurate segmentation and classification of tumors in the brain. Furthermore, the DN-Xpert and its partner models have shown high-level performance by exceeding benchmarks with accuracy that goes up to 99.4 % and precision, recall, and F1-score metrics reaching a maximum of 99 %. This outstanding accuracy emphasizes the potential power of our unique approaches in changing how we detect and classify brain tumors.
KW - Brain tumor
KW - Classification
KW - Deep learning
KW - Image processing
KW - Magnetic resonance image (MRI)
KW - Segmentation
UR - http://www.scopus.com/inward/record.url?scp=105000550761&partnerID=8YFLogxK
U2 - 10.1016/j.aej.2025.03.007
DO - 10.1016/j.aej.2025.03.007
M3 - Article
AN - SCOPUS:105000550761
SN - 1110-0168
VL - 123
SP - 29
EP - 45
JO - Alexandria Engineering Journal
JF - Alexandria Engineering Journal
ER -