Traumatic meningeal enhancement detection by deep learning-based biomedical image analysis and handcrafted features extraction
Abstract
Traumatic Meningeal Enhancement (TME) is a critical medical condition characterized
by abnormal enhancement of the meninges following trauma, often observed
in medical imaging studies. Traumatic meningeal injuries result from external forces
hitting the head or skull, damaging the brain’s protective coverings. These injuries
can come from falls, car accidents, sports injuries, attacks, or other head trauma.
Even in the absence of further trauma-related cerebral abnormalities, TME may be
visible on an acute MRI. In addition to highlighting some of the present considerations
and unresolved issues of using them, this research aims to address some of
the prospective applications of more sophisticated imaging in traumatic meningeal
enhancement (TME). A deep convolutional neural network (CNN) model that uses
a dataset of 7800 images is used in this study. Testing and training are the two
discrete parts of the dataset. We have used the appropriate augmentation method
to construct the dataset. Three categories have been used to categorize the data in
this study: normal, early (pre), and acute (post). We divided the 6,000 images into
three categories for training: normal, early (pre), and acute (post). 30% of the data
was used for testing, while the remaining 70% was used for training. The dataset
was evaluated against five different transfer learning models and a customized CNN
model known as the 13-layered CNN model in the research. We evaluated four
transfer learning models, namely VGG19, VGG16, InceptionV3, and MobileNet, using
an identical dataset. The accuracy rates obtained were 84%, 86%, 80%, and
89% respectively. Utilizing the same dataset, we proceeded to ensemble these pretrained
models and it obtained 88.83% accuracy. Surprisingly, even with the ensemble,
our customized CNN model exhibited superior accuracy. Additionally, we
conducted SVM and XG Boost hand-crafted feature extraction using techniques
like positional orientation (PO), histogram of oriented gradients (HOG), and mean
pixel value (MPV). SVM obtained accuray of PO,normal:67% early(pre): 65% and
acute(post):67%, for HOG, normal:81% early(pre): 75% and acute(post):77%, for
MPV, normal:71% early(pre): 70% and acute(post):70%. XGBoost obtained accuracy
of PO,normal:63% early(pre): 60% and acute(post):57%, for HOG, normal:72%
early(pre): 69% and acute(post):70%, for MPV, normal:66% early(pre): 63% and
acute(post):62%. Subsequently, we applied Support Vector Machine (SVM) and
XGBoost algorithms for feature extraction. Despite these efforts, our CNN model
consistently outperformed the models built using these feature extraction methods.
In contrast, our newly customized CNN model demonstrated a remarkable accuracy
of 91%. These results illustrate that when it comes to image processing, our CNN
model performs better than any other model in identifying traumatic meningeal
brain enhancement.