6533b81ffe1ef96bd127751f

RESEARCH PRODUCT

Pattern recognition based prediction of the outcome of radiotherapy in cervical cancer treatment

Mohammed YasarVimala Nunavath

subject

description

Masteroppgave i informasjons- og kommunikasjonsteknologi IKT590 2011 – Universitetet i Agder, Grimstad Cervical Cancer is one the most common cancers amongst women. Ev- ery year almost 300 Norwegian women are diagnosed with cervical cancer. It is the 5th most deadly cancer type amongst women in the world. Esti- mates show that there are approximately 473,000 cases of cervical cancer in 2008 and 253,500 deaths per year. As we can see from the statistics, cer- vical cancer is a very severe and common type of cancer which costs many human lives every year. Therefore any progression in prognostication of this disease is very essential to treatment of its patients. Our task in this project was to analyze contrast enhanced MR imaging data from 78 patients. This data was recorded after a certain period of time after the patients received radiotherapy. The data was collected after a median time of 48 months for each patient. The outcome of the treatment and propagation of the contrast medium in to the blood vessels (in tumor region) was recorded. The main focus of this project was to model spatial patterns in the Cervix Cancer data set using hidden Markov models (HMM) in one of the machine learning techniques can be used to predict the outcome of radiotherapy treatment of the cervical cancer patients based on identi ed patterns with given data samples. To nd the unobserved (hidden) patterns, we have used hidden Markov models on the dataset to nd hidden patterns in the data. These models show the distribution of the outcome of the treatment, grouped by the similarities between properties of the contrast medium in the blood vessels. Our research shows that hidden Markov models are not feasible for this dataset. It was not possible to retrieve any information with high enough accuracy to be able to predict outcome of radiotherapy treatment.

http://hdl.handle.net/11250/137533