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Emulator-based Bayesian calibration of the CISNET colorectal cancer models

Emulator-based Bayesian calibration of the CISNET colorectal cancer models

来源:medRxiv_logomedRxiv
英文摘要

Abstract PurposeTo calibrate Cancer Intervention and Surveillance Modeling Network (CISNET) ‘s SimCRC, MISCAN-Colon, and CRC-SPIN simulation models of the natural history colorectal cancer (CRC) with an emulator-based Bayesian algorithm and internally validate the model-predicted outcomes to calibration targets. MethodsWe used Latin hypercube sampling to sample up to 50,000 parameter sets for each CISNET-CRC model and generated the corresponding outputs. We trained multilayer perceptron artificial neural networks (ANN) as emulators using the input and output samples for each CISNET-CRC model. We selected ANN structures with corresponding hyperparameters (i.e., number of hidden layers, nodes, activation functions, epochs, and optimizer) that minimize the predicted mean square error on the validation sample. We implemented the ANN emulators in a probabilistic programming language and calibrated the input parameters with Hamiltonian Monte Carlo-based algorithms to obtain the joint posterior distributions of the CISNET-CRC models’ parameters. We internally validated each calibrated emulator by comparing the model-predicted posterior outputs against the calibration targets. ResultsThe optimal ANN for SimCRC had four hidden layers and 360 hidden nodes, MISCAN-Colon had 4 hidden layers and 114 hidden nodes, and CRC-SPIN had one hidden layer and 140 hidden nodes. The total time for training and calibrating the emulators was 7.3, 4.0, and 0.66 hours for SimCRC, MISCAN-Colon, and CRC-SPIN, respectively. The mean of the model-predicted outputs fell within the 95% confidence intervals of the calibration targets in 98 of 110 for SimCRC, 65 of 93 for MISCAN, and 31 of 41 targets for CRC-SPIN. ConclusionsUsing ANN emulators is a practical solution to reduce the computational burden and complexity for Bayesian calibration of individual-level simulation models used for policy analysis, like the CISNET CRC models.

Rutter Carolyn、Kuntz Karen M.、Ozik Jonathan、Collier Nicholson、Davidi Barak、van Duuren Luuk、Lansdorp-Vogelaar Iris、Knudsen Amy B.、de Lima Pedro Nascimento、Pineda-Antunez Carlos、Seguin Claudia、Alarid-Escudero Fernando

Fred Hutchinson Cancer Research Center, Hutchinson Institute for Cancer Outcomes Research, Biostatistics Program, Public Health Sciences DivisionDivision of Health Policy & Management, University of Minnesota School of Public HealthDecision and Infrastructure Sciences Division, Argonne National Laboratory||Consortium for Advanced Science and Engineering, University of ChicagoDecision and Infrastructure Sciences Division, Argonne National Laboratory||Consortium for Advanced Science and Engineering, University of ChicagoInstitute for Technology Assessment, Massachusetts General HospitalDepartment of Public Health, Erasmus MC Medical Center RotterdamDepartment of Public Health, Erasmus MC Medical Center RotterdamInstitute for Technology Assessment, Massachusetts General HospitalRAND CorporationGlobal Health Cost Consortium (CISIDAT)Institute for Technology Assessment, Massachusetts General HospitalDepartment of Health Policy, School of Medicine, Stanford University||Center for Health Policy, Freeman Spogli Institute, Stanford University

10.1101/2023.02.27.23286525

医学研究方法肿瘤学生物科学研究方法、生物科学研究技术

Bayesian calibrationemulatormachine learningartificial neural networkscolorectal cancer model

Rutter Carolyn,Kuntz Karen M.,Ozik Jonathan,Collier Nicholson,Davidi Barak,van Duuren Luuk,Lansdorp-Vogelaar Iris,Knudsen Amy B.,de Lima Pedro Nascimento,Pineda-Antunez Carlos,Seguin Claudia,Alarid-Escudero Fernando.Emulator-based Bayesian calibration of the CISNET colorectal cancer models[EB/OL].(2025-03-28)[2025-06-09].https://www.medrxiv.org/content/10.1101/2023.02.27.23286525.点此复制

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