Machine Learning Optimisation for Realistic 2D and 3D PET-CT Phantom Study

Mhd Saeed Sharif *

Department of Electronic and Computer Engineering, School of Engineering and Design, Brunel University, London, United Kingdom

Maysam Abbod

Department of Electronic and Computer Engineering, School of Engineering and Design, Brunel University, London, United Kingdom

Luke I Sonoda

Paul Strickland Scanner Centre, Mount Vernon Hospital, United Kingdom

Bal Sanghera

Paul Strickland Scanner Centre, Mount Vernon Hospital, United Kingdom

*Author to whom correspondence should be addressed.


Abstract

An experimental study using artificial neural network (ANN) is carried out to achieve the optimal network architecture for proposed positron emission tomography (PET) application. 55 experimental phantom datasets acquired under clinically realistic conditions with different 2-D and 3-D acquisitions and image reconstruction parameters along with 2min, 3min and 4min scan times
per bed are used in this study. The best scanner parameters are determined based on the ANN experimental evaluation of the proposed datasets. The analysis methodology of phantom PET data has shown promising results and can successfully classify and quantify malignant lesions in clinically realistic datasets.

Keywords: Image Analysis, Positron Emission Tomography (PET), Tumour, Segmentation, Artificial Neural Network


How to Cite

Sharif, Mhd Saeed, Maysam Abbod, Luke I Sonoda, and Bal Sanghera. 2013. “Machine Learning Optimisation for Realistic 2D and 3D PET-CT Phantom Study”. Current Journal of Applied Science and Technology 4 (4):634-49. https://doi.org/10.9734/BJAST/2014/5084.

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