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. Author manuscript; available in PMC: 2020 May 7.
Published in final edited form as: Nanoscale. 2019 Nov 28;11(46):22515–22530. doi: 10.1039/c9nr06327g

Table 3.

Classifier metrics using nanoparticle trajectories to predict particle type (PS-COOH, PS-COOH in serum, PS-PEG, and PS-PEG in serum) in 0.4% agarose gel model of the brain. From left to right: (1) sample size of training and test datasets after spatial checkerboard split, (2) log median predictor using diffusion coefficients at τ = 100 ms, (3) log median predictor using mean diffusion coefficients at τ = 100 ms averaged over 9 μm × 9 μm windows, (4) neural network predictor trained with principal components from trajectory feature analysis using both individual and locally averaged geometric features

Sample size
Median predictora
Neural networka
Training Test Training Test Training Test
PS-COOH 134 717 135 518 0.329 0.324 1.000 0.902
PS-COOH in serum 191 947 191654 0.357 0.374 1.000 0.916
PS-PEG 52 038 51 917 0.166 0.191 0.998 0.741
PS-PEG in serum 351 935 352 061 0.828 0.821 1.000 0.981
Avg/tot 730 637 731 150 0.420 0.427 0.998 0.885
a

Predictions performed using locally averaged features.