Presentation
19 June 2024 Sample-size planning tools for multivariate data
Oleg Ryabchykov, Shuxia Guo, Ruihao Luo, Nairveen Ali, Thomas Bocklitz
Author Affiliations +
Abstract
Sample size planning (SSP) is crucial for experimental planning but is not well-established for spectroscopic and image data, especially in combination with deep learning. The existing approaches are typically quite complex for routine use in experimental planning. To make the existing approaches more accessible, we developed web-based tools for the existing approaches. Besides, we extended the approach to imaging data and deep learning by introducing transfer learning in the SSP pipeline.

ACKNOWLEDGMENT: Financial support from the EU, the TMWWDG, the TAB, the BMBF, the DFG, the Carl-Zeiss Foundation, and the Leibniz Association is greatly acknowledged. This work is supported by the BMBF, funding program Photonics Research Germany (LPI-BT3-IPHT, FKZ: 13N15708) and is integrated into the Leibniz Center for Photonics in Infection Research (LPI). The LPI initiated by Leibniz-IPHT, Leibniz-HKI, Friedrich Schiller University Jena, and Jena University Hospital is part of the BMBF national roadmap for research infrastructures.
Conference Presentation
© (2024) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Oleg Ryabchykov, Shuxia Guo, Ruihao Luo, Nairveen Ali, and Thomas Bocklitz "Sample-size planning tools for multivariate data", Proc. SPIE PC13011, Data Science for Photonics and Biophotonics, PC1301103 (19 June 2024); https://doi.org/10.1117/12.3016158
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KEYWORDS
Deep learning

Data modeling

Photonics

Spectroscopy

Cross validation

Human-machine interfaces

Imaging spectroscopy

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