Abstract

Shape is data and data is shape. Biologists are accustomed to thinking about how the shape of biomolecules, cells, tissues, and organisms arise from the effects of genetics, development, and the environment. Less often do we consider that data itself has shape and structure, or that it is possible to measure the shape of data and analyze it. Here, we review applications of topological data analysis (TDA) to biology in a way accessible to biologists and applied mathematicians alike. TDA uses principles from algebraic topology to comprehensively measure shape in data sets. Using a function that relates the similarity of data points to each other, we can monitor the evolution of topological features—connected components, loops, and voids. This evolution, a topological signature, concisely summarizes large, complex data sets. We first provide a TDA primer for biologists before exploring the use of TDA across biological sub‐disciplines, spanning structural biology, molecular biology, evolution, and development. We end by comparing and contrasting different TDA approaches and the potential for their use in biology. The vision of TDA, that data are shape and shape is data, will be relevant as biology transitions into a data‐driven era where the meaningful interpretation of large data sets is a limiting factor.

Highlights

  • SHAPE IS DATA AND DATA IS SHAPEShape is foundational to biology

  • We return to sets of vertices and rather than describe shape in the vulgar sense, we focus on topology

  • We describe topological data analysis (TDA) frameworks to measure shape focusing on leaf outlines and the usefulness of Euler characteristic curve (ECC) to measure genetic and environmental effects that determine phenotype

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Summary

Introduction

SHAPE IS DATA AND DATA IS SHAPEShape is foundational to biology. Observing and documenting shape has fueled biological understanding, and from this perspective, it is a type of data. We provide examples where the VR complex has successfully been applied to structural biology, evolution, cellular architecture, and neural networks (Figure 6A-C).

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