Author
Listed:
- Alexandr A. Kalinin
(Broad Institute of MIT and Harvard)
- John Arevalo
(Broad Institute of MIT and Harvard)
- Erik Serrano
(University of Colorado School of Medicine)
- Loan Vulliard
(German Cancer Research Center (DKFZ))
- Hillary Tsang
(Broad Institute of MIT and Harvard)
- Michael Bornholdt
(Broad Institute of MIT and Harvard)
- Alán F. Muñoz
(Broad Institute of MIT and Harvard)
- Suganya Sivagurunathan
(Broad Institute of MIT and Harvard)
- Bartek Rajwa
(Purdue University)
- Anne E. Carpenter
(Broad Institute of MIT and Harvard)
- Gregory P. Way
(University of Colorado School of Medicine)
- Shantanu Singh
(Broad Institute of MIT and Harvard)
Abstract
Large-scale profiling assays capture a cell population’s state by measuring thousands of biological properties per cell or sample. However, evaluating profile strength and similarity remains challenging due to the high dimensionality and non-linear, heterogeneous nature of measurements. Here, we develop a statistical framework using mean average precision (mAP) as a single, data-driven metric to address this challenge. We validate the mAP framework against established metrics through simulations and real-world data, revealing its ability to capture subtle and meaningful biological differences in cell state. Specifically, we use mAP to assess a sample’s phenotypic activity relative to controls, as well as the phenotypic consistency of groups of perturbations (or samples). We evaluate the framework across diverse datasets and on different profile types (image, protein, mRNA), perturbations (CRISPR, gene overexpression, small molecules), and resolutions (single-cell, bulk). The mAP framework, together with our open-source software package copairs, is useful for evaluating high-dimensional profiling data in biological research and drug discovery.
Suggested Citation
Alexandr A. Kalinin & John Arevalo & Erik Serrano & Loan Vulliard & Hillary Tsang & Michael Bornholdt & Alán F. Muñoz & Suganya Sivagurunathan & Bartek Rajwa & Anne E. Carpenter & Gregory P. Way & Sha, 2025.
"A versatile information retrieval framework for evaluating profile strength and similarity,"
Nature Communications, Nature, vol. 16(1), pages 1-17, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-60306-2
DOI: 10.1038/s41467-025-60306-2
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