Diagnosing and categorizing of pulmonary diseases using Deep learning conventional Neural network

Journal Title: International Journal of Experimental Research and Review - Year 2023, Vol 31, Issue 2

Abstract

Lung cancer is one of the major illnesses that contribute to millions of fatalities worldwide. Numerous deaths could be saved through the early identification and categorization of lung cancers. However, with traditional approaches, classification accuracy cannot be produced. To detect and classify lung diseases, a deep learning convolutional neural network model has been developed. LDDC, the customized local trilateral filter, is used for pre-processing the lung images from computing tomography for non-local trilateral filters. The region of interest for lung cancer was successfully restricted throughout the segmentation of the disease using hybrid fuzzy morphological procedures. To extract the deep seismic features, the Laplacian pyramid decomposition method was utilized for the segmented image. This paper covers an overall analysis of non-local trilateral filter Processing, hybrid fuzzy morphological techniques and analysis of patient and disease characteristics of LIDR- IDRI and FDA data of Group A (no co-AGA), P-value, Multi-mut Patient, Group B (with a co-AGA).

Authors and Affiliations

N. Sudhir Reddy, V. Khanaa

Keywords

Related Articles

Investigation on the thio-Claisen rearrangement of 2-[(4-aryloxy-2- butynyl)sulfanyl]thiophene

2H-thiopyrano[3,2-c]coumarins have been regioselectively produced in 55-78%yield by the thermal [3,3] sigmatropic rearrangement led us to conduct research on the thioClaisen rearrangement of 2-[(4-aryloxy-2-butynyl)su...

Exploration of ethno-medicinal herbs and their practices by indigenous people of Achanakmar regions of Chhattisgarh State, India

The study was performed in the Achanakmar regions of Chhattisgarh state, India. At the study site, a total of 54 herbaceous medicinal plants belonging to 30 families were documented. Between March 2020 and March 2022, i...

Performance and Accuracy Enhancement During Skin Disease Detection in Deep Learning

Epidermolysis bullosa is a type of skin cancer that is consistently ranked as among the worst diseases in the world. Accurate categorization of skin lesions in their early stages may assist during clinical deliberation,...

Occurrences of seven new records of goat fishes (family: Mullidae) from the coastal waters ofWest Bengal, India

Thirty eight fish specimens of family Mullidae were collected during the ornamental faunal survey around the West Bengal coast. All these specimens were identified into seven species which are addition to the faunal reso...

Validated Stability Indicating UHPLC Method for the Quantification of Escitalopram and Flupentixol in Pharmaceutical Formulation

To assess Escitalopram and flupentixol simultaneously, a verified method for ultra-phase high-performance liquid chromatography (UHPLC) has been developed to indicate stability. The method was thoroughly evaluated and me...

Download PDF file
  • EP ID EP719459
  • DOI https://doi.org/10.52756/10.52756/ijerr.2023.v31spl.002
  • Views 74
  • Downloads 0

How To Cite

N. Sudhir Reddy, V. Khanaa (2023). Diagnosing and categorizing of pulmonary diseases using Deep learning conventional Neural network. International Journal of Experimental Research and Review, 31(2), -. https://www.europub.co.uk/articles/-A-719459