# Development and implementation of multiplex methods to understand the biology and heterogeneity of patient-derived cancer models

> **NIH NIH U01** · DANA-FARBER CANCER INST · 2020 · $1,004,910

## Abstract

Abstract
Experimental models of cancer provide the means both to decipher the molecular basis of cancer and to develop
new therapeutic agents. To date, most cancer research has employed established cancer cell lines and
genetically engineered mouse models. Although these models have provided tremendous insight into many
aspects of cancer initiation and progression, each of these models has important limitations, including adaptation
to culture (cell lines), lack of genomic instability (mouse models), and inadequate representation of the spectrum
of mutations and subtypes of human cancers. Next generation cancer models (NGCMs) such as organoid
models have recently been developed. NGCMs address many deficits of prior models and promise to accelerate
cancer research and experimental therapeutic efforts.
 Recent methodological advances now make it possible to create patient-derived cancer cell lines and
organoids with increased efficiency. When coupled with genomic analysis, these new models may facilitate new
insights into human cancers. However, organoids require complex culture conditions and display distinct
properties that pose challenges for implementation of standard molecular and cell biology techniques. To
facilitate widespread use of organoid models within the research community, we must develop innovative
technologies to overcome these challenges and enable study of organoids for a range of cancer phenotypes.
 In this Project, we will build on our expertise in the development of genome scale and informatic methods as
well as our work to derive many of the HCMI models with the goal of developing high throughput approaches to
perform genetic and small molecule screens in patient-derived organoids created by the Human Cancer Models
Initiative (HCMI). In addition, we will use innovative methods to interrogate cell state plasticity and heterogeneity
in these models. These studies will allow the cancer research community to perform both high and low throughput
analyses in patient-derived models and to provide deep insight into the stability and phenotypes represented by
these models. While we will focus our technology development efforts using pancreatic cancer organoids, we
anticipate that the approaches developed in this proposal will be widely applicable to many different models from
a range of cancer types.
 In Aim 1, we will develop and implement a highly multiplexed method to screen patient-derived organoid
models with both small molecules and genetic reagents. These studies will provide a powerful approach to
interrogating HCMI models at high throughput. In Aim 2, we will build on our preliminary studies that indicate that
patient-derived organoids exhibit heterogeneity and rapid shifts in expressed phenotypes. We will interrogate
the dynamics of these state changes and assess the degrees of heterogeneity in these models using newly
developed physical and sequencing methodology. In Aim 3, we will build on Project Achilles and the DepMap
(...

## Key facts

- **NIH application ID:** 10004385
- **Project number:** 1U01CA250549-01
- **Recipient organization:** DANA-FARBER CANCER INST
- **Principal Investigator:** William C. Hahn
- **Activity code:** U01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $1,004,910
- **Award type:** 1
- **Project period:** 2020-06-15 → 2023-05-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10004385

## Citation

> US National Institutes of Health, RePORTER application 10004385, Development and implementation of multiplex methods to understand the biology and heterogeneity of patient-derived cancer models (1U01CA250549-01). Retrieved via AI Analytics 2026-05-24 from https://api.ai-analytics.org/grant/nih/10004385. Licensed CC0.

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