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      Kinetic Models for Predicting Cervical Cancer Response to Radiation Therapy on Individual Basis Using Tumor Regression Measured In Vivo With Volumetric Imaging.

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          Abstract

          This article describes a macroscopic mathematical modeling approach to capture the interplay between solid tumor evolution and cell damage during radiotherapy. Volume regression profiles of 15 patients with uterine cervical cancer were reconstructed from serial cone-beam computed tomography data sets, acquired for image-guided radiotherapy, and used for model parameter learning by means of a genetic-based optimization. Patients, diagnosed with either squamous cell carcinoma or adenocarcinoma, underwent different treatment modalities (image-guided radiotherapy and image-guided chemo-radiotherapy). The mean volume at the beginning of radiotherapy and the end of radiotherapy was on average 23.7 cm(3) (range: 12.7-44.4 cm(3)) and 8.6 cm(3) (range: 3.6-17.1 cm(3)), respectively. Two different tumor dynamics were taken into account in the model: the viable (active) and the necrotic cancer cells. However, according to the results of a preliminary volume regression analysis, we assumed a short dead cell resolving time and the model was simplified to the active tumor volume. Model learning was performed both on the complete patient cohort (cohort-based model learning) and on each single patient (patient-specific model learning). The fitting results (mean error: ∼ 16% and ∼ 6% for the cohort-based model and patient-specific model, respectively) highlighted the model ability to quantitatively reproduce tumor regression. Volume prediction errors of about 18% on average were obtained using cohort-based model computed on all but 1 patient at a time (leave-one-out technique). Finally, a sensitivity analysis was performed and the data uncertainty effects evaluated by simulating an average volume perturbation of about 1.5 cm(3) obtaining an error increase within 0.2%. In conclusion, we showed that simple time-continuous models can represent tumor regression curves both on a patient cohort and patient-specific basis; this discloses the opportunity in the future to exploit such models to predict how changes in the treatment schedule (number of fractions, doses, intervals among fractions) might affect the tumor regression on an individual basis.

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          Author and article information

          Journal
          Technol. Cancer Res. Treat.
          Technology in cancer research & treatment
          SAGE Publications
          1533-0338
          1533-0338
          Feb 2016
          : 15
          : 1
          Affiliations
          [1 ] Department of Electronics, Information and Bioengineering, Politecnico di Milano University, Milan, Italy antonella.belfatto@polimi.it.
          [2 ] Department of Electronics, Information and Bioengineering, Politecnico di Milano University, Milan, Italy Bioengineering Unit, Centro Nazionale di Adroterapia Oncologica, Pave, Italy.
          [3 ] Division of Radiotherapy, European Institute of Oncology, Milan, Italy.
          [4 ] Division of Radiotherapy, European Institute of Oncology, Milan, Italy Department of Health Sciences, University of Milan, Milan, Italy.
          [5 ] Bioengineering Unit, Centro Nazionale di Adroterapia Oncologica, Pave, Italy Division of Radiotherapy, European Institute of Oncology, Milan, Italy Department of Health Sciences, University of Milan, Milan, Italy.
          Article
          1533034615573796
          10.1177/1533034615573796
          25759423
          ae10e894-b382-4ba5-a89d-0e7a9c37fe6a
          History

          image-guided radiotherapy,linear-quadratic model,radiosensitivity,tumor mathematical modeling,uterine cervical cancer

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