Improved unsupervised physics-informed deep learning for intravoxel incoherent motion modeling and evaluation in pancreatic cancer patients
Misha P.T. Kaandorp, Sebastiano Barbieri, Remy Klaassen, Hanneke W.M., van Laarhoven, Hans Crezee, Peter T. While, Aart J. Nederveen, Oliver J., Gurney-Champion

TL;DR
This study introduces an improved physics-informed deep learning model, IVIM-NET_optim, for more accurate and consistent intravoxel incoherent motion modeling in pancreatic cancer, outperforming previous methods in simulations and patient data.
Contribution
The paper presents IVIM-NET_optim, an enhanced unsupervised deep neural network for IVIM modeling, demonstrating superior accuracy, independence, and consistency over prior models and traditional approaches.
Findings
IVIM-NET_optim outperforms previous models in accuracy and consistency.
It provides less noisy parameter maps in vivo.
Detects significant parameter changes in treated patients.
Abstract
: Earlier work showed that IVIM-NET, an unsupervised physics-informed deep neural network, was more accurate than other state-of-the-art intravoxel-incoherent motion (IVIM) fitting approaches to DWI. This study presents an improved version: IVIM-NET, and characterizes its superior performance in pancreatic ductal adenocarcinoma (PDAC) patients. : In simulations (SNR=20), the accuracy, independence and consistency of IVIM-NET were evaluated for combinations of hyperparameters (fit S0, constraints, network architecture, # hidden layers, dropout, batch normalization, learning rate), by calculating the NRMSE, Spearman's , and the coefficient of variation (CV), respectively. The best performing network, IVIM-NET was compared to least squares (LS) and a Bayesian approach at different SNRs. IVIM-NET's performance…
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