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A data science approach for early-stage prediction of Patient's susceptibility to acute side effects of advanced radiotherapy.
Aldraimli, Mahmoud; Soria, Daniele; Grishchuck, Diana; Ingram, Samuel; Lyon, Robert; Mistry, Anil; Oliveira, Jorge; Samuel, Robert; Shelley, Leila E A; Osman, Sarah; Dwek, Miriam V; Azria, David; Chang-Claude, Jenny; Gutiérrez-Enríquez, Sara; De Santis, Maria Carmen; Rosenstein, Barry S; De Ruysscher, Dirk; Sperk, Elena; Symonds, R Paul; Stobart, Hilary; Vega, Ana; Veldeman, Liv; Webb, Adam; Talbot, Christopher J; West, Catharine M; Rattay, Tim; Chaussalet, Thierry J.
Afiliação
  • Aldraimli M; The Health Innovation Ecosystem, University of Westminster, London, UK. Electronic address: w1654353@my.westminster.ac.uk.
  • Soria D; School of Computing, University of Kent, Canterbury, UK.
  • Grishchuck D; Imperial College Healthcare NHS Trust, London, UK.
  • Ingram S; Division of Cancer Sciences, Faculty of Biology, Medicine and Health, The University of Manchester, UK.
  • Lyon R; Department of Computer Science, Edge Hill University, Ormskirk, Lancashire, UK.
  • Mistry A; Guy's and St Thomas' NHS Foundation Trust, London, UK.
  • Oliveira J; Mirada Medical, Oxford, UK.
  • Samuel R; University of Leeds, Leeds Cancer Centre, St. James's University Hospital, Leeds, UK.
  • Shelley LEA; Edinburgh Cancer Centre, Western General Hospital, Crewe Road South, Edinburgh, UK.
  • Osman S; Patrick G Johnston Centre for Cancer Research, Queen's University Belfast, Belfast, UK.
  • Dwek MV; School of Life Sciences, University of Westminster, London, UK.
  • Azria D; University of Montpellier, France.
  • Chang-Claude J; German Cancer Research Center (DKFZ) Division of Cancer Epidemiology, Unit of Genetic Epidemiology, Heidelberg, Germany.
  • Gutiérrez-Enríquez S; Vall d'Hebron Institute of Oncology, Barcelona, Spain.
  • De Santis MC; Dept of Radiation Oncology 1, Fondazione IRCCS Istituto Nazionale dei Tumori, Milan, Italy.
  • Rosenstein BS; Prostate Cancer Program, Mount Sinai School of Medicine, New York, USA.
  • De Ruysscher D; Maastricht Radiation Oncology (MAASTRO Clinic) University Hospital Maastricht, the Netherlands.
  • Sperk E; Department of Radiation Oncology, University Medical Center Mannheim, Medical Faculty Mannheim, Heidelberg University, Germany.
  • Symonds RP; Department of Oncology, Leicester Royal Infirmary, UK.
  • Stobart H; Independent Cancer Patients' Voice, London, UK.
  • Vega A; Fundación Publica Galega Medicina Xenomica, Santiago de Compostela, Spain.
  • Veldeman L; Department of Basic Medical Sciences, University Hospital Ghent, Belgium.
  • Webb A; Department of Genetics and Genome Biology, University of Leicester, UK.
  • Talbot CJ; Cancer Research Centre, University of Leicester, Leicester, UK.
  • West CM; Institute of Cancer Sciences, Christie Hospital, Wilmslow Road, Manchester, UK.
  • Rattay T; Cancer Research Centre, University of Leicester, Leicester, UK.
  • Chaussalet TJ; The Health Innovation Ecosystem, University of Westminster, London, UK.
Comput Biol Med ; 135: 104624, 2021 08.
Article em En | MEDLINE | ID: mdl-34247131
ABSTRACT
The prediction by classification of side effects incidence in a given medical treatment is a common challenge in medical research. Machine Learning (ML) methods are widely used in the areas of risk prediction and classification. The primary objective of such algorithms is to use several features to predict dichotomous responses (e.g., disease positive/negative). Similar to statistical inference modelling, ML modelling is subject to the class imbalance problem and is affected by the majority class, increasing the false-negative rate. In this study, seventy-nine ML models were built and evaluated to classify approximately 2000 participants from 26 hospitals in eight different countries into two groups of radiotherapy (RT) side effects incidence based on recorded observations from the international study of RT related toxicity "REQUITE". We also examined the effect of sampling techniques and cost-sensitive learning methods on the models when dealing with class imbalance. The combinations of such techniques used had a significant impact on the classification. They resulted in an improvement in incidence status prediction by shifting classifiers' attention to the minority group. The best classification model for RT acute toxicity prediction was identified based on domain experts' success criteria. The Area Under Receiver Operator Characteristic curve of the models tested with an isolated dataset ranged from 0.50 to 0.77. The scale of improved results is promising and will guide further development of models to predict RT acute toxicities. One model was optimised and found to be beneficial to identify patients who are at risk of developing acute RT early-stage toxicities as a result of undergoing breast RT ensuring relevant treatment interventions can be appropriately targeted. The design of the approach presented in this paper resulted in producing a preclinical-valid prediction model. The study was developed by a multi-disciplinary collaboration of data scientists, medical physicists, oncologists and surgeons in the UK Radiotherapy Machine Learning Network.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Ciência de Dados Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Humans Idioma: En Revista: Comput Biol Med Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Ciência de Dados Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Humans Idioma: En Revista: Comput Biol Med Ano de publicação: 2021 Tipo de documento: Article