Brain Sciences (Feb 2023)

An Efficient Framework to Detect Intracranial Hemorrhage Using Hybrid Deep Neural Networks

  • Manikandan Rajagopal,
  • Suvarna Buradagunta,
  • Meshari Almeshari,
  • Yasser Alzamil,
  • Rajakumar Ramalingam,
  • Vinayakumar Ravi

DOI
https://doi.org/10.3390/brainsci13030400
Journal volume & issue
Vol. 13, no. 3
p. 400

Abstract

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Intracranial hemorrhage (ICH) is a serious medical condition that necessitates a prompt and exhaustive medical diagnosis. This paper presents a multi-label ICH classification issue with six different types of hemorrhages, namely epidural (EPD), intraparenchymal (ITP), intraventricular (ITV), subarachnoid (SBC), subdural (SBD), and Some. A patient may experience numerous hemorrhages at the same time in some situations. A CT scan of a patient’s skull is used to detect and classify the type of ICH hemorrhage(s) present. First, our model determines whether there is a hemorrhage or not; if there is a hemorrhage, the model attempts to identify the type of hemorrhage(s). In this paper, we present a hybrid deep learning approach that combines convolutional neural network (CNN) and Long-Short Term Memory (LSTM) approaches (Conv-LSTM). In addition, to propose viable solutions for the problem, we used a Systematic Windowing technique with a Conv-LSTM. To ensure the efficacy of the proposed model, experiments are conducted on the RSNA dataset. The suggested model provides higher sensitivity (93.87%), specificity (96.45%), precision (95.21%), and accuracy (95.14%). In addition, the obtained F1 score results outperform existing deep neural network-based algorithms.

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