In this paper, we tackle the problem of reconstructing earlier tumor configurations starting from a single spatial measurement at a later time. We describe the tumor evolution through a diffuse interface model coupling a Cahn–Hilliard-type equation for the tumor phase field to a reaction–diffusion equation for the nutrient, also accounting for chemotaxis effects. Reconstructing earlier tumor states is essential for the model calibration and also to identify the tumor’s initial development areas. However, backward-in-time inverse problems are severely ill-posed, even for linear parabolic equations. Nonetheless, we can establish uniqueness by using logarithmic convexity methods under suitable a priori assumptions. To further address the ill-posedness of the inverse problem, we propose a Tikhonov-regularization approach that approximates the solution through a family of constrained minimization problems. For such problems, we analytically derive the first-order necessary optimality conditions. Finally, we develop a computationally efficient numerical approximation of the optimization problems by employing standard C0-conforming first-order finite elements. We conduct numerical experiments on several test cases and observe that the proposed algorithm meets expectations, delivering accurate reconstructions of the original ground truth.

Identifying early tumor states in a Cahn–Hilliard-reaction–diffusion model / A. Agosti, E. Beretta, C. Cavaterra, M. Fornoni, E. Rocca. - In: MATHEMATICAL MODELS AND METHODS IN APPLIED SCIENCES. - ISSN 0218-2025. - 35:11(2025), pp. 2329-2394. [10.1142/s0218202525500411]

Identifying early tumor states in a Cahn–Hilliard-reaction–diffusion model

C. Cavaterra;M. Fornoni
Penultimo
;
2025

Abstract

In this paper, we tackle the problem of reconstructing earlier tumor configurations starting from a single spatial measurement at a later time. We describe the tumor evolution through a diffuse interface model coupling a Cahn–Hilliard-type equation for the tumor phase field to a reaction–diffusion equation for the nutrient, also accounting for chemotaxis effects. Reconstructing earlier tumor states is essential for the model calibration and also to identify the tumor’s initial development areas. However, backward-in-time inverse problems are severely ill-posed, even for linear parabolic equations. Nonetheless, we can establish uniqueness by using logarithmic convexity methods under suitable a priori assumptions. To further address the ill-posedness of the inverse problem, we propose a Tikhonov-regularization approach that approximates the solution through a family of constrained minimization problems. For such problems, we analytically derive the first-order necessary optimality conditions. Finally, we develop a computationally efficient numerical approximation of the optimization problems by employing standard C0-conforming first-order finite elements. We conduct numerical experiments on several test cases and observe that the proposed algorithm meets expectations, delivering accurate reconstructions of the original ground truth.
backward inverse problem; Cahn–Hilliard equation; finite elements approximation; first-order optimality conditions; reaction–diffusion equation; Tikhonov regularization; tumor growth models;
Settore MATH-03/A - Analisi matematica
   Assegnazione Dipartimenti di Eccellenza 2023-2027 - Dipartimento di MATEMATICA 'FEDERIGO ENRIQUES'
   DECC23_012
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA

   Partial differential equations and related geometric-functional inequalities.
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   20229M52AS_004
2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1190361
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