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http://hdl.handle.net/2183/39604 Patient-specific forecasting of postradiotherapy prostate-specific antigen kinetics enables early prediction of biochemical relapse
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Di Muzio, Nadia Gisella
Deantoni, Chiara Lucrezia
Cozzarini, Cesare
Fodor, Andrei
Briganti, Alberto
Montorsi, Francesco
Pérez-García, Víctor M.
Reali, Alessandro
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Lorenzo, G., di Muzio, N., Deantoni, C. L., Cozzarini, C., Fodor, A., Briganti, A., Montorsi, F., Pérez-García, V. M., Gomez, H., & Reali, A. (2022). Patient-specific forecasting of postradiotherapy prostate-specific antigen kinetics enables early prediction of biochemical relapse. iScience, 25(11). https://doi.org/10.1016/J.ISCI.2022.105430
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Abstract
[Abstract:] The detection of prostate cancer recurrence after external beam radiotherapy relies on the measurement of a sustained rise of serum prostate-specific antigen (PSA). However, this biochemical relapse may take years to occur, thereby delaying the delivery of a secondary treatment to patients with recurring tumors. To address this issue, we propose to use patient-specific forecasts of PSA dynamics to predict biochemical relapse earlier. Our forecasts are based on a mechanistic model of prostate cancer response to external beam radiotherapy, which is fit to patient-specific PSA data collected during standard posttreatment monitoring. Our results show a remarkable performance of our model in recapitulating the observed changes in PSA and yielding short-term predictions over approximately 1 year (cohort median root mean squared error of 0.10–0.47 ng/mL and 0.13 to 1.39 ng/mL, respectively). Additionally, we identify 3 model-based biomarkers that enable accurate identification of biochemical relapse (area under the receiver operating characteristic curve > 0.80) significantly earlier than standard practice (p < 0.01).
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Atribución-NoComercial-SinDerivadas 3.0 España








