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Published March 2023 | Published
Journal Article Open

Toward implementing autonomous adaptive data acquisition for scanning hyperspectral imaging of biological systems

Abstract

Autonomous experimentation is an emerging area of research, primarily related to autonomous vehicles, scientific combinatorial discovery approaches in materials science and drug discovery, and iterative research loops of planning, experimentation, and analysis. However, autonomous approaches developed in these contexts are difficult to apply to high-dimensional mapping technologies, such as scanning hyperspectral imaging of biological systems, due to sample complexity and heterogeneity. We briefly cover the history of adaptive sampling algorithms and surrogate modeling in order to define autonomous adaptive data acquisition as an objective-based, flexible building block for future biological imaging experimentation driven by intelligent infrastructure. We subsequently summarize the recent implementations of autonomous adaptive data acquisition (AADA) for scanning hyperspectral imaging, assess how these address the difficulties of autonomous approaches in hyperspectral imaging, and highlight the AADA design variation from a goal-oriented perspective. Finally, we present a modular AADA architecture that embeds AADA-driven flexible building blocks to address the challenge of time resolution for high-dimensional scanning hyperspectral imaging of nonequilibrium dynamical systems. In our example research-driven experimental design case, we propose an AADA infrastructure for time-resolved, noninvasive, and label-free scanning hyperspectral imaging of living biological systems. This AADA infrastructure can accurately target the correct state of the system for experimental workflows that utilize subsequent expensive, high-information-content analytical techniques.

Additional Information

© 2023 Author(s). All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/). E.A.H. was supported by Howard Hughes Medical Institute (HHMI) under Grant No. 047-101, with which P.W.S. was an investigator. H.-Y.N.H. was supported by the Berkeley Synchrotron Infrared Structural Biology (BSISB) Imaging program sponsored by the U.S. Department of Energy, Office of Science, Office of Biological and Environmental Research under Contract No. DE-AC02-05CH11231. Author Contributions. E.A.H. prepared, wrote, and edited the manuscript. H.K. contributed computer science domain expertise and edited the manuscript. D.R.H. reviewed, discussed, and edited the manuscript. H.-Y.N.H. contributed infrared spectroscopy of biological systems domain expertise and edited the manuscript. P.W.S. contributed biology domain expertise and edited the manuscript. Elizabeth Anne Holman: Conceptualization (lead); Methodology (lead); Writing – original draft (lead); Writing – review & editing (equal). Harinarayan Krishnan: Methodology (supporting); Writing – review & editing (supporting). Derek Rudolf Holman: Writing – review & editing (equal). Hoi-Ying N. Holman: Funding acquisition (equal); Writing – review & editing (equal). Paul W. Sternberg: Funding acquisition (equal); Writing – review & editing (supporting). DATA AVAILABILITY. Data sharing is not applicable to this article as no new data were created or analyzed in this study. The authors have no conflicts to disclose.

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Created:
August 22, 2023
Modified:
December 22, 2023