Open Journal of Medical Imaging

Volume 3, Issue 2 (June 2013)

ISSN Print: 2164-2788   ISSN Online: 2164-2796

Google-based Impact Factor: 0.15  Citations  

Ideal Midline Detection Using Automated Processing of Brain CT Image

HTML  Download Download as PDF (Size: 1735KB)  PP. 51-59  
DOI: 10.4236/ojmi.2013.32007    6,045 Downloads   9,797 Views  Citations

ABSTRACT

Brain ideal midline estimation is vital in medical image processing, especially in analyzing the severity of a brain injury in clinical environments. We propose an automated computer-aided ideal midline estimation system with a two-step process. First, a CT Slice Selection Algorithm (SSA) can automatically select an appropriate subset of slices from a large number of raw CT images using the skulls anatomical features. Next, an ideal midline detection is implemented on the selected subset of slices. An exhaustive symmetric position search is performed based on the anatomical features in the detection. In order to enhance the accuracy of the detection, a global rotation assumption is applied to determine the ideal midline by fully considering the connection between slices. Experimental results of the multi-stage algorithm were assessed on 3313 CT slices of 70 patients. The accuracy of the proposed system is 96.9%, which makes it viable for use under clinical settings.

Share and Cite:

Qi, X. , Belle, A. , Shandilya, S. , Chen, W. , Cockrell, C. , Tang, Y. , Ward, K. , Hargraves, R. and Najarian, K. (2013) Ideal Midline Detection Using Automated Processing of Brain CT Image. Open Journal of Medical Imaging, 3, 51-59. doi: 10.4236/ojmi.2013.32007.

Cited by

[1] Computer-Aided Detection of Brain Midline Using CT Images
Machine Learning in …, 2023
[2] Hybrid Thresholding Method in Detection and Extraction of Brain Hemorrhage on the CT-Scan Image
Journal of Computer Scine and …, 2021
[3] Automated Midline Estimation for Symmetry Analysis of Cerebral Hemispheres in FLAIR MRI
2021
[4] Automatic Plane Adjustment of Orthopedic Intraoperative Flat Panel Detector CT-Volumes
2020
[5] An Approach to Extraction Midsagittal Plane of Skull from Brain CT Images for Oral and Maxillofacial Surgery
2019
[6] Feature Extraction of the Brain Tumours with the help of MRI, based on Symmetry and partitioning
2019
[7] Multiple Thresholding Methods for Extracting & Measuring Human Brain and 3D Reconstruction
2019
[8] Detection of Hemorrhagic Region in Brain MRI
Proceedings of 2nd International Conference on Communication, Computing and Networking, 2019
[9] Intelligent support system for CVA diagnosis by cerebral computerized tomography
2017
[10] A Simple, Fast and Fully Automated Approach for Midline Shift Measurement on Brain Computed Tomography
2017
[11] An Intelligent Support System for Automatic Detection of Cerebral Vascular Accidents from Brain CT Images
Computer Methods and Programs in Biomedicine, 2017
[12] Hybrids Otsu method, Feature region and Mathematical Morphology for Calculating Volume Hemorrhage Brain on CT-Scan Image and 3D Reconstruction
2017
[13] 頭部 CT 画像における基底核を含む断面画像の自動選択
医用画像情報学会雑誌, 2016
[14] Detection and Extraction of Brain Hemorrhage on the CT-Scan Image using Hybrid Thresholding Method
2016
[15] Review of Computational Methods on Brain Symmetric and Asymmetric Analysis from Neuroimaging Techniques
2016
[16] The Effect of Symmetry Features on Cerebral Vascular Accident Detection Accuracy
Portuguese Conference on Pattern Recognition, 2015
[17] Automated Intracranial Pressure Prediction Using Multiple Features Sources
Information Science and Applications (ICISA), 2013 International Conference on. IEEE, 2013

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.