An efficient deep learning approach to predict heart failure from image data using ejection fraction
Abstract
Heart is the core of human body. A normal heart beats almost 1,15,200 times in a day
and 80 beats per second to make us live alive. But we often take it granted and do
uncertain thinks which stops it to function perfectly. In today’s world cardiovascular
diseases(CVDs) almost kill 17-18 million life’s each year worldwide which makes
it the biggest disease of death. If early detection of heart malfunction or Heart
failure(HF) can be detect millions of people will able to breath even longer than
usual. In our research our main aim is to create an automated Deep Learning based
model which will predict HF and the depth of the condition. Moreover, using which
type of cardiac MRI image slice we can get better result will be consider to be
our main research goal. For this we choose a cardiac MRI dataset which consists
of 1100 different heart patients image having different slices in different pattern.
Furthermore, with more observation and leveling different parameter with the help
of Ejection Fraction(EF) values which depends on systole diastole value of heart we
able to predict the heart failure with an efficient result. AI, ML & deep learning is
the new trend for solving real life human problems. We used different Convolution
Neural Network architecture and obtained accuracy are VGG-16(88.15%), VGG-
19(87.93%), ResNet-50 (75.85%), ResNet-101 (79.53%) Inception-V3 (85.27%). Our
model is being used to find the suitable result to detect the Heart Failure(HF) with
Ejection Fraction(EF).