Deciphering patient-specific mechanisms of cancer cell reprogramming remains a crucial challenge in systems oncology, as it is key to improving patient diagnosis and treatment. For this reason, comprehensive and patient-specific multi-omic characterization of tumor specimens has become increasingly common in clinical practice. Here, we developed PatientProfiler, a computational workflow that integrates proteogenomic data with curated causal interaction networks to generate mechanistic models of signal transduction for individual patients. PatientProfiler allows multi-omic data analysis and standardization, generation of patient-specific mechanistic models of signal transduction, and extraction of network-based prognostic biomarkers. We successfully benchmarked the tool on proteogenomic and clinical data derived from 122 biopsies of treatment-naïve breast cancer, available through the CPTAC portal. We identified patient-specific mechanistic models that recapitulate oncogenic signaling pathways. In-depth topological exploration of these networks revealed seven subgroups of patients, associated with unique transcriptomic signatures and distinct prognostic values. We identified well-known Basal-like 1 and 2 subtypes, while also highlighting distinct mechanistic drivers such as the MYC–CDK4/6 axis or NF-kappaB-mediated inflammatory programs. Beyond breast cancer, PatientProfiler offers a generalizable framework to transform cohort-level multi-omic data into interpretable mechanistic models, making it applicable across diverse cancer types and other complex diseases.

PatientProfiler: building patient-specific signaling models from proteogenomic data / Lombardi, Veronica; Di Rocco, Lorenzo; Meo, Eleonora; Venafra, Veronica; Di Nisio, Elena; Perticaroli, Valerio; Lorentz Nicolaeasa, Mihail; Cencioni, Chiara; Spallotta, Francesco; Negri, Rodolfo; Sacco, Francesca; Perfetto, Livia. - In: MOLECULAR SYSTEMS BIOLOGY. - ISSN 1744-4292. - (2025). [10.1038/s44320-025-00160-y]

PatientProfiler: building patient-specific signaling models from proteogenomic data

Veronica Lombardi
Primo
;
Lorenzo Di Rocco;Veronica Venafra;Elena Di Nisio;Valerio Perticaroli;Chiara Cencioni;Francesco Spallotta;Rodolfo Negri;Livia Perfetto
2025

Abstract

Deciphering patient-specific mechanisms of cancer cell reprogramming remains a crucial challenge in systems oncology, as it is key to improving patient diagnosis and treatment. For this reason, comprehensive and patient-specific multi-omic characterization of tumor specimens has become increasingly common in clinical practice. Here, we developed PatientProfiler, a computational workflow that integrates proteogenomic data with curated causal interaction networks to generate mechanistic models of signal transduction for individual patients. PatientProfiler allows multi-omic data analysis and standardization, generation of patient-specific mechanistic models of signal transduction, and extraction of network-based prognostic biomarkers. We successfully benchmarked the tool on proteogenomic and clinical data derived from 122 biopsies of treatment-naïve breast cancer, available through the CPTAC portal. We identified patient-specific mechanistic models that recapitulate oncogenic signaling pathways. In-depth topological exploration of these networks revealed seven subgroups of patients, associated with unique transcriptomic signatures and distinct prognostic values. We identified well-known Basal-like 1 and 2 subtypes, while also highlighting distinct mechanistic drivers such as the MYC–CDK4/6 axis or NF-kappaB-mediated inflammatory programs. Beyond breast cancer, PatientProfiler offers a generalizable framework to transform cohort-level multi-omic data into interpretable mechanistic models, making it applicable across diverse cancer types and other complex diseases.
2025
Breast Cancer; Mechanistic Modeling; Multi-omic Integration; Prognostic Biomarkers; Signal Transduction
01 Pubblicazione su rivista::01a Articolo in rivista
PatientProfiler: building patient-specific signaling models from proteogenomic data / Lombardi, Veronica; Di Rocco, Lorenzo; Meo, Eleonora; Venafra, Veronica; Di Nisio, Elena; Perticaroli, Valerio; Lorentz Nicolaeasa, Mihail; Cencioni, Chiara; Spallotta, Francesco; Negri, Rodolfo; Sacco, Francesca; Perfetto, Livia. - In: MOLECULAR SYSTEMS BIOLOGY. - ISSN 1744-4292. - (2025). [10.1038/s44320-025-00160-y]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1752444
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