Real-Time Detection of Meningiomas by Image Segmentation: A Very Deep Transfer Learning Convolutional Neural Network Approach

被引:1
作者
Das, Debasmita [1 ]
Sarkar, Chayna [2 ]
Das, Biswadeep [3 ]
机构
[1] Vellore Inst Technol, Dept Comp Sci & Engn, Vellore Campus,Tiruvalam Rd, Vellore 632014, Tamil Nadu, India
[2] North Eastern Indira Gandhi Reg Inst Hlth & Med Sc, Dept Clin Pharmacol & Therapeut, Shillong 793018, Meghalaya, India
[3] All India Inst Med Sci AIIMS, Dept Pharmacol, Virbhadra Rd, Rishikesh 249203, Uttarakhand, India
关键词
brain tumor; meningioma; convolutional neural networks (CNNs); very deep transfer learning; VGG-16; magnetic resonance imaging; machine learning; radiomics; CENTRAL-NERVOUS-SYSTEM; ARTIFICIAL-INTELLIGENCE; CLASSIFICATION; RADIOMICS; BRAIN; TUMORS; SURVEILLANCE; MULTICENTER; PERFORMANCE; PREDICTION;
D O I
10.3390/tomography11050050
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background/Objectives: Developing a treatment strategy that effectively prolongs the lives of people with brain tumors requires an accurate diagnosis of the condition. Therefore, improving the preoperative classification of meningiomas is a priority. Machine learning (ML) has made great strides thanks to the development of convolutional neural networks (CNNs) and computer-aided tumor detection systems. The deep convolutional layers automatically extract important and dependable information from the input space, in contrast to more traditional neural network layers. One recent and promising advancement in this field is ML. Still, there is a dearth of studies being carried out in this area. Methods: Therefore, starting with the analysis of magnetic resonance images, we have suggested in this research work a tried-and-tested and methodical strategy for real-time meningioma diagnosis by image segmentation using a very deep transfer learning CNN model or DNN model (VGG-16) with CUDA. Since the VGGNet CNN model has a greater level of accuracy than other deep CNN models like AlexNet, GoogleNet, etc., we have chosen to employ it. The VGG network that we have constructed with very small convolutional filters consists of 13 convolutional layers and 3 fully connected layers. Our VGGNet model takes in an sMRI FLAIR image input. The VGG's convolutional layers leverage a minimal receptive field, i.e., 3 x 3, the smallest possible size that still captures up/down and left/right. Moreover, there are also 1 x 1 convolution filters acting as a linear transformation of the input. This is followed by a ReLU unit. The convolution stride is fixed at 1 pixel to keep the spatial resolution preserved after convolution. All the hidden layers in our VGG network also use ReLU. A dataset consisting of 264 3D FLAIR sMRI image segments from three different classes (meningioma, tuberculoma, and normal) was employed. The number of epochs in the Sequential Model was set to 10. The Keras layers that we used were Dense, Dropout, Flatten, Batch Normalization, and ReLU. Results: According to the simulation findings, our suggested model successfully classified all of the data in the dataset used, with a 99.0% overall accuracy. The performance metrics of the implemented model and confusion matrix for tumor classification indicate the model's high accuracy in brain tumor classification. Conclusions: The good outcomes demonstrate the possibility of our suggested method as a useful diagnostic tool, promoting better understanding, a prognostic tool for clinical outcomes, and an efficient brain tumor treatment planning tool. It was demonstrated that several performance metrics we computed using the confusion matrix of the previously used model were very good. Consequently, we think that the approach we have suggested is an important way to identify brain tumors.
引用
收藏
页数:28
相关论文
共 89 条
[1]  
Abrar M, 2023, 2023 14 INT C INF CO, P24, DOI DOI 10.1109/ICTC58733.2023.10392830
[2]  
Abuqadumah M.M., 2019, Period. Eng. Nat. Sci, V7, P1300, DOI [10.21533/pen.v7i3.733, DOI 10.21533/PEN.V7I3.733]
[3]   Challenges to curing primary brain tumours [J].
Aldape, Kenneth ;
Brindle, Kevin M. ;
Chesler, Louis ;
Chopra, Rajesh ;
Gajjar, Amar ;
Gilbert, Mark R. ;
Gottardo, Nicholas ;
Gutmann, David H. ;
Hargrave, Darren ;
Holland, Eric C. ;
Jones, David T. W. ;
Joyce, Johanna A. ;
Kearns, Pamela ;
Kieran, Mark W. ;
Mellinghoff, Ingo K. ;
Merchant, Melinda ;
Pfister, Stefan M. ;
Pollard, Steven M. ;
Ramaswamy, Vijay ;
Rich, Jeremy N. ;
Robinson, Giles W. ;
Rowitch, David H. ;
Sampson, John H. ;
Taylor, Michael D. ;
Workman, Paul ;
Gilbertson, Richard J. .
NATURE REVIEWS CLINICAL ONCOLOGY, 2019, 16 (08) :509-520
[4]   Moving Convolutional Neural Networks to Embedded Systems: the AlexNet and VGG-16 case [J].
Alippi, Cesare ;
Disabato, Simone ;
Roveri, Manuel .
2018 17TH ACM/IEEE INTERNATIONAL CONFERENCE ON INFORMATION PROCESSING IN SENSOR NETWORKS (IPSN), 2018, :212-223
[5]   Meningioma in the elderly [J].
Amoo, Michael ;
Henry, Jack ;
Farrell, Michael ;
Javadpour, Mohsen .
NEURO-ONCOLOGY ADVANCES, 2023, 5 (SUPP1) :I13-I25
[6]  
Assefa Getachew, 2006, Ethiop Med J, V44, P263
[7]  
Bakas S, 2019, Arxiv, DOI arXiv:1811.02629
[8]   Epidemiology of meningiomas [J].
Baldi, I. ;
Engelhardt, J. ;
Bonnet, C. ;
Bauchet, L. ;
Berteaud, E. ;
Grueber, A. ;
Loiseau, H. .
NEUROCHIRURGIE, 2018, 64 (01) :5-14
[9]  
Banerjee S, 2017, IEEE INT CONF FUZZY
[10]   Prediction of neoadjuvant radiation chemotherapy response and survival using pretreatment [18F]FDG PET/CT scans in locally advanced rectal cancer [J].
Bang, Ji-In ;
Ha, Seunggyun ;
Kang, Sung-Bum ;
Lee, Keun-Wook ;
Lee, Hye-Seung ;
Kim, Jae-Sung ;
Oh, Heung-Kwon ;
Lee, Ho-Young ;
Kim, Sang Eun .
EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2016, 43 (03) :422-431