Predicting Lung Disease Severity via Image-Based AQI Analysis using Deep Learning Techniques
Anvita Mahajan, Sayali Mate, Chinmayee Kulkarni, Suraj Sawant

TL;DR
This study develops an integrated deep learning approach to predict air quality index and assess lung disease severity from image data, achieving high accuracy and aiming for global application.
Contribution
It refines existing techniques by combining image-based AQI prediction with lung disease severity assessment using neural networks and classifiers.
Findings
Neural network achieved 87.44% test accuracy for AQI prediction.
KNN classifier achieved 97.5% test accuracy for lung disease severity.
The approach outperforms existing methods in accuracy and integration.
Abstract
Air pollution is a significant health concern worldwide, contributing to various respiratory diseases. Advances in air quality mapping, driven by the emergence of smart cities and the proliferation of Internet-of-Things sensor devices, have led to an increase in available data, fueling momentum in air pollution forecasting. The objective of this study is to devise an integrated approach for predicting air quality using image data and subsequently assessing lung disease severity based on Air Quality Index (AQI).The aim is to implement an integrated approach by refining existing techniques to improve accuracy in predicting AQI and lung disease severity. The study aims to forecast additional atmospheric pollutants like AQI, PM10, O3, CO, SO2, NO2 in addition to PM2.5 levels. Additionally, the study aims to compare the proposed approach with existing methods to show its effectiveness. The…
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Taxonomy
TopicsBrain Tumor Detection and Classification · COVID-19 diagnosis using AI
