3D Neural Network for Detection of ACL Injury in Knee MRI Scans / (Record no. 608905)

000 -LEADER
fixed length control field 02096nam a22001577a 4500
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 610
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Kamran, Abdullah
245 ## - TITLE STATEMENT
Title 3D Neural Network for Detection of ACL Injury in Knee MRI Scans /
Statement of responsibility, etc. Abdullah Kamran
264 ## - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture Islamabad :
Name of producer, publisher, distributor, manufacturer SMME- NUST;
Date of production, publication, distribution, manufacture, or copyright notice 2022.
300 ## - PHYSICAL DESCRIPTION
Extent 43p.
Other physical details Soft Copy
Dimensions 30cm
500 ## - GENERAL NOTE
General note Computer aided diagnosis is widely used in medical imaging for the diagnosis of many<br/>diseases such as cardiomegaly, brain and kidney tumor, lung cancer, COVID-19 and<br/>may more. For the past few decades, computer aided diagnosis has significantly<br/>improved due to the development of better architecture used for the diagnosis. Knee<br/>injury diagnosis using deep learning techniques is highly popular due its high detection<br/>rate and is highly localized. Many state-of-the-art-deep learning models have been<br/>used for the detection of abnormalities, meniscus tear and ACL tears in Knee MRI<br/>scans. These models include RESNET, Google-Net, VGG19 and VGG16, Alex-Net<br/>and many other, all giving significant results. In this study we used a custom 3D CNN<br/>model which is light in weight. For training we are using two datasets, one provided<br/>by Stanford ML group and the other form Hospital in Croatia. We combined the two<br/>dataset and split it into 80-20 ration (80% of the data used for training and remaining<br/>for testing purposes). Both the dataset has extreme class imbalance, so we used data<br/>augmentation and class weights to rectify its effect on the training process. Further the<br/>voxel intensities for the two datasets were different (one dataset was in 8-bit format<br/>and the second was in 12-bit format), so we normalized the intensity values using<br/>mathematical formulas. For contrast, we performed adaptive histogram equalization<br/>Average accuracy and AUC achieved by our model on training set is 97.6 and 99.3<br/>respectively, during 5-fold cross validation.
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element MS Biomedical Engineering (BME)
700 ## - ADDED ENTRY--PERSONAL NAME
Personal name Supervisor : Dr. Omer Gilani
856 ## - ELECTRONIC LOCATION AND ACCESS
Uniform Resource Identifier <a href="http://10.250.8.41:8080/xmlui/handle/123456789/31042">http://10.250.8.41:8080/xmlui/handle/123456789/31042</a>
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme
Koha item type Thesis
Holdings
Withdrawn status Permanent Location Current Location Shelving location Date acquired Full call number Barcode Koha item type
  School of Mechanical & Manufacturing Engineering (SMME) School of Mechanical & Manufacturing Engineering (SMME) E-Books 04/22/2024 610 SMME-TH-772 Thesis
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