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Deep learning neural network (DLNN)-based classification and optimization algorithm for organ inflammation disease diagnosis

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Abstract

Diagnostic image volume and complexity in healthcare system increases in rapid pace where available human proficiency may not sufficient for interpreting this much capacity of image data. Machine learning approaches exposed excessive potential to knob huge amount of two-dimensional annotated images of common illnesses from large databases. Deep learning imitates human for extracting knowledge from dataset and favourable to data scientists for accumulating, analysing, interpreting and predictive modelling. In this paper, organ inflammation disease is addressed with deep learning neural network (DLNN)-based classification scheme is incorporated to diagnose or prognoses the patient from severity, based on their historical database. In pandemic environment collecting histopathology tissue score is time-consuming process due to a smaller number of physician availability, by implementing proposed DLNN algorithm suits for collecting organ inflammation score and categorizing its brutality by classification of pancreatitis, duodenum and appendix. In order to achieve accuracy and sensitivity of various stages soreness DLNN-based algorithm is developed and it supports by classifying the datasets.

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Funding

This research was done with financial support from the Deanship of Scientific Research at King Khalid University under research grant number (R.G.P.2/388/44).

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Correspondence to A. Alavudeen Basha.

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Basha, A.A., Ali, A.M., Parthasarathy, P. et al. Deep learning neural network (DLNN)-based classification and optimization algorithm for organ inflammation disease diagnosis. Soft Comput (2023). https://doi.org/10.1007/s00500-023-08212-x

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