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Proceedings of the 2021 Sixth International Conference on Research in Intelligent and Computing

Annals of Computer Science and Information Systems, Volume 27

Classification-Segmentation Pipeline for MRI via Transfer Learning and Residual Networks

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DOI: http://dx.doi.org/10.15439/2021R14

Citation: Proceedings of the 2021 Sixth International Conference on Research in Intelligent and Computing, Vijender Kumar Solanki, Nguyen Ho Quang (eds). ACSIS, Vol. 27, pages 3943 ()

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Abstract. Artificial intelligence association into brain magnetic resonance imaging (MRI) and clinical practices embracesubstantial cancer diagnosis improvement. The advancement ofdeep learning has improved the processing and analysis of MRI,boosting models' performance, decreasing the destructive effectsof data sources overload, and increasing accurate detection andtime efficacy. However, that specific dataset leads to diverseresearch fields such as image processing and analysis, detection, registration, segmentation, and classification. This paperproposes a decision-making pipeline for MRI data by combiningimage classification and segmentation. First, the pipeline shouldcorrectly produce a correct decision given an MRI image. If thefigure is classified as defective, the pipeline can extract defectregions and highlight them accordingly. We have implementedseveral advanced convolutional neural networks with transferlearning and residual techniques to address two broad clinicalconcerns in one decision-making workflow.

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