E3S Web of Conferences (Jan 2023)

Detecting Cardiomegaly from CXR Images Using a 2D and 1D Convolutional Neural Network-Based Classifier

  • Raghu Kumar L.,
  • Sravanthi K.,
  • Sai Kiran E.,
  • Vinith D.,
  • Siri D.,
  • Joshi Sanjeev Kumar

DOI
https://doi.org/10.1051/e3sconf/202343001156
Journal volume & issue
Vol. 430
p. 01156

Abstract

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A disorder called cardiomegaly has no symptoms. Heart hypertrophy and ventricular hypertrophy are two subtypes of the early symptoms of cardiac hypertrophy. Blowup, include pulsations, tightness in the chest, and shortness of breath. Their fundamental causes and therapeutic approaches differ. Making decisions on when to provide drugs and execute operations can be aided by the early detection of cardiomegaly. Along with the problems with home inspection. Similar to how time-consuming it is and how visitors and mortal interpretations are needed, a supporting tool is needed to automatically detect and distinguish between a normal heart and an enlarged heart.In medical procedures Based on examinations of chest X-rays (CXR) in anterior poster anterior view, this study suggests merging Convolution neural network, 2D and 1D grounded classifiers for quick cardiomegaly detection. The initial feature extraction and pattern recognition tests were performed using the original CXR image is enhanced and undesired noises are removed using the 2D and 1D convolution methods as well as a multilayer linked classification network. The classifier’s performance is validated using K-fold cross-validation after it has been trained using Using the testing dataset, the training dataset was analyzed. Recall, accuracy, precision, and F1 score of the rapid-fire cardiomegaly screening performance are demonstrated by experimental results.

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