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Plain Text - 2.1 KB - MD5: 49902e7f9afb62dbf6b7dce62014a085
ZIP Archive - 42.1 MB - MD5: 104d1ad68a458c12be6b2237102b9eb4
ZIP Archive - 9.4 MB - MD5: e1a2e474ea71fd2d71b3a2e44bb1f41b
Jul 9, 2021
Ancin-Murguzur, Francisco Javier, 2021, "Replication Data for: Using near-infrared reflectance spectroscopy (NIRS) to predict carbon and nitrogen stable isotope composition in animal tissues", https://doi.org/10.18710/5PX1GJ, DataverseNO, V1
1. Stable isotopes analysis (SIA) of carbon and nitrogen provides valuable information about trophic interactions and animal feeding habits. 2. We used near-infrared reflectance spectroscopy (NIRS) and support vector machines (SVM) to develop a model for screening isotopic ratios...
R Syntax - 5.9 KB - MD5: aedacc09bfa6ffabbe0f9c029864a811
The "Script.R" file contains all the required R commands to develop the main model described in the related publication
Plain Text - 30.0 MB - MD5: 7591534c20ec2d832f94a53bb7677f3c
The "Spectra.txt" file contains the reference spectral dataset, with columns named with their corresponding wavelength number (X350 to X2450) and the sample identifier ("Sample")
Plain Text - 10.6 KB - MD5: ed8103b3925e9bc9cfb0df4aa4d8794f
The "Values.txt" file contains the reference chemical values for d13C, d15N, C, N and the C/N ratios (with equivalent column names) as well as the sample identifier
Jun 25, 2021
Opstad, Ida S.; Godtliebsen, Gustav; Sekh, Arif Ahmed, 2021, "Replication Data for: Physics based machine learning for sub-cellular segmentation in living cells", https://doi.org/10.18710/IDCUCI, DataverseNO, V1
Abstract: Segmenting sub-cellular structures in living cells from fluorescence microscopy images is a ground truth (GT) hard problem. The microscope’s 3-dimensional blurring function, finite optical resolution due to light diffraction, finite pixel resolution, and complex morphol...
Plain Text - 15.6 KB - MD5: e132db0a0f357ed56600fb8b42da3583
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