# Identification of adaptive response mechanisms in breast cancer by information theory and proteomics

> **NIH NIH U01** · MASSACHUSETTS INSTITUTE OF TECHNOLOGY · 2022 · $359,532

## Abstract

SUMMARY
Over the past decade the accumulation of large-scale systems level data sets has occurred at an accelerating
pace. Unfortunately, to date this massive accumulation of biological and medical information has rarely
translated into truly efficacious therapies that dramatically alter the course of disease. Clearly new informatics
approaches are needed that will enable the identification of transformative therapeutics. The central goal of this
proposal is to develop an experimental-theoretical approach that defines, with high accuracy, the altered protein
network structures present in each cancer malignancy. We propose to integrate quantitative mass spectrometry-
based protein and protein phosphorylation measurements with surprisal analysis, a thermodynamic-based
information theory approach, to resolve altered protein network structure in each malignancy. An altered
network in each patients' tumor may comprise several distinct, sometimes rewired, protein subnetworks that
drive the molecular imbalance in cancer tissue. Identification of unbalanced subnetworks will highlight
molecular nodes that will be targeted in each patient to either restore the basal, non-transformed state or to
decrease tumor cell viability. To demonstrate the ability of this approach to define unbalanced subnetworks and
their associated therapeutic targets, the proposal is divided into three phases with increasing complexity and
physiological relevance. In the first phase, RTK networks in breast cancer cell lines representing different
subtypes will be stimulated with natural ligands to induce well characterized unbalanced processes to validate
the ability of surprisal analysis to identify these networks. In the second phase, unbalanced processes present in
the basal, unstimulated state of each cell line will be defined. Therapeutic targeting of these processes, alone or
in combination, at high and low dose, will be performed to assess the effect of complete vs. incomplete
inhibition. Unbalanced processes mediating the development of therapeutic resistance during long-term low-
dose treatment will be quantified at various time points to predict combination therapies to abrogate resistance.
Finally, surprisal analysis will be used to identify unbalanced processes associated with chemotherapeutic
resistance in vivo in triple negative breast cancer patient derived xenograft tumors. Nodes in these imbalanced
networks will be targeted to decrease tumor viability. Combination with chemotherapy may further sensitize
tumor cells to treatment. Through these efforts we aim to demonstrate the ability of this combined proteomic-
surprisal analysis strategy to rationally design, with high-precision, patient-specific drug cocktails that prevent
drug resistance development.

## Key facts

- **NIH application ID:** 10398951
- **Project number:** 5U01CA238720-04
- **Recipient organization:** MASSACHUSETTS INSTITUTE OF TECHNOLOGY
- **Principal Investigator:** Nataly Kravchenko-Balasha
- **Activity code:** U01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2022
- **Award amount:** $359,532
- **Award type:** 5
- **Project period:** 2019-06-01 → 2024-05-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10398951

## Citation

> US National Institutes of Health, RePORTER application 10398951, Identification of adaptive response mechanisms in breast cancer by information theory and proteomics (5U01CA238720-04). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10398951. Licensed CC0.

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