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

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

2023Brain Sciences25 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Convolutional neural networkSubarachnoid hemorrhageDeep learningIntraventricular hemorrhageArtificial intelligenceIntraparenchymal hemorrhageArtificial neural networkComputer scienceSubdural hemorrhageMedicineBrain hemorrhageMachine learningPattern recognition (psychology)RadiologyAnesthesiaHematomaBlood pressureGestational agePregnancyBiologyGeneticsIntracerebral and Subarachnoid Hemorrhage ResearchMachine Learning in HealthcareTopic Modeling