Analysis of Cone-Beam CT using prior information
Data(s) |
14/07/2011
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Resumo |
Treatment plans for conformal radiotherapy are based on an initial CT scan. The aim is to deliver the prescribed dose to the tumour, while minimising exposure to nearby organs. Recent advances make it possible to also obtain a Cone-Beam CT (CBCT) scan, once the patient has been positioned for treatment. A statistical model will be developed to compare these CBCT scans with the initial CT scan. Changes in the size, shape and position of the tumour and organs will be detected and quantified. Some progress has already been made in segmentation of prostate CBCT scans [1],[2],[3]. However, none of the existing approaches have taken full advantage of the prior information that is available. The planning CT scan is expertly annotated with contours of the tumour and nearby sensitive objects. This data is specific to the individual patient and can be viewed as a snapshot of spatial information at a point in time. There is an abundance of studies in the radiotherapy literature that describe the amount of variation in the relevant organs between treatments. The findings from these studies can form a basis for estimating the degree of uncertainty. All of this information can be incorporated as an informative prior into a Bayesian statistical model. This model will be developed using scans of CT phantoms, which are objects with known geometry. Thus, the accuracy of the model can be evaluated objectively. This will also enable comparison between alternative models. |
Formato |
application/pdf |
Identificador | |
Relação |
http://eprints.qut.edu.au/54747/4/YSC2011_posterMTM_%282%29.pdf Moores, Matthew T., Hargrave, Catriona Elizabeth, Harden, Fiona, & Mengersen, Kerrie (2011) Analysis of Cone-Beam CT using prior information. In SSAI Young Statisticians’ Conference, July 14-15, 2011, UQ St Lucia, Queensland, Australia. (Unpublished) |
Fonte |
School of Clinical Sciences; Faculty of Health; Institute of Health and Biomedical Innovation; School of Mathematical Sciences; Science & Engineering Faculty |
Palavras-Chave | #010402 Biostatistics #080104 Computer Vision #111208 Radiation Therapy #Bayesian statistics #X-ray computed tomography #Image segmentation |
Tipo |
Conference Item |