We discuss the use ofmachine learning algorithms to predict which breast cancer patients are likely to respond to (neoadjunctive) chemotherapy. A group of 96 patients from the Aberdeen Royal Infirmary had the size of their tumours assessed by Positron Emission Tomography at various stages of their chemotherapy treatment. The aim is to predict at an early stage which patients have low response to the therapy, for which alternative treatment plans should be followed. A variety of machine learning algorithms were used with this data set. Results indicate that machine learning methods outperform previous statistical approaches on the same data set.
CITATION STYLE
Gyftodimos, E., Moss, L., Sleeman, D., & Welch, A. (2008). Analysing PET scans data for predicting response to chemotherapy in breast cancer patients. In Applications and Innovations in Intelligent Systems XV (pp. 59–72). Springer London. https://doi.org/10.1007/978-1-84800-086-5_5
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