Intracranial hemorrhage detection using CNN-LSTM fusion model
Abstract
Intracranial Hemorrhage is a term used to describe bleeding between the brain tissue
and the skull or within the brain tissue itself. It is life-threatening and needs immediate
medical attention. As the first response, it is indispensable to detect the type
of intracranial hemorrhage as soon as possible. Now, the manual detection methods
require the help of an imaging expert and are certainly very time-consuming. Although
there are several techniques for identifying them such as utilizing CT-scan
images, magnetic resonance imaging (MRI), magnetic resonance angiogram (MRA),
and ultrasound-based images, the results are still not adequate and have much room
for improvement. In addition to these methods, researchers have also used imaging
strategies based on Convolutional Neural Network (CNN) or Recurrent Neural Network
(RNN) for this purpose. Therefore, this research aims to combine both these
two fields and propose a model based on Deep Learning(DL) to detect intracranial
hemorrhage. The goal of this paper is to automate the detection of intracranial hemorrhage
and make the process more efficient and accurate. The model is expected
to provide us with satisfactory results and can be used as an effective alternative to
the existing methods.