Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Determination of nanoparticle size and size distribution is important because these key parameters dictate nanomaterials' properties and applications. Yet, it is only accomplishable using low-throughput electron microscopy. Herein, we incorporate plasmonic-domain-driven feature engineering with machine learning (ML) for accurate and bidirectional prediction of both parameters for complete characterization of nanoparticle ensembles. Using gold nanospheres as our model system, our ML approach achieves the lowest prediction errors of 2.3% and ±1.0 nm for ensemble size and size distribution respectively, which is 3-6 times lower than previously reported ML or Mie approaches. Knowledge elicitation from the plasmonic domain and concomitant translation into featurization allow us to mitigate noise and boost data interpretability. This enables us to overcome challenges arising from size anisotropy and small sample size limitations to achieve highly generalizable ML models. We further showcase inverse prediction capabilities, using size and size distribution as inputs to generate spectra with LSPRs that closely match experimental data. This work illustrates a ML-empowered total nanocharacterization strategy that is rapid (<30 s), versatile, and applicable over a wide size range of 200 nm.

Download full-text PDF

Source
http://dx.doi.org/10.1039/d2nh00146bDOI Listing

Publication Analysis

Top Keywords

size size
16
size distribution
16
size
10
machine learning
8
accurate bidirectional
8
bidirectional prediction
8
nanoparticle size
8
incorporating plasmonic
4
plasmonic featurization
4
featurization machine
4

Similar Publications

Background And Purpose: Socioeconomic determinants of health impact childhood development and adult health outcomes. One key aspect is the physical environment and neighborhood where children live and grow. Emerging evidence suggests that neighborhood deprivation, often measured by the Area Deprivation Index (ADI), may influence neurodevelopment, but longitudinal and multimodal neuroimaging analyses remain limited.

View Article and Find Full Text PDF

Herein, ruthenium nanoparticles (RuNPs) were synthesized using Tridax procumbens leaf extract as a reducing and stabilizing agent. The synthesis was optimized by adjusting temperature, leaf extract concentration, and reaction time. The synthesized RuNPs were characterized using UV-visible, XRD, EDAX, FTIR spectroscopy, SEM, and TEM, revealing uniform size and morphology.

View Article and Find Full Text PDF

Natal dispersal is a key process in ecology and evolution. Similarities of dispersal patterns between relatives can lead to small-scale kin structure within populations with consequences for population dynamics and genetics. Most studies have focused on birds, lizards, and small mammals.

View Article and Find Full Text PDF

Introduction: Due to its tonal and syllabic structures, Chinese speakers may encounter unique difficulties when learning native Western operatic techniques. These challenges are particularly evident in balancing pitch control, subglottic pressure, and vowel production. The present study examines how native language influences vocal performance, using the Italian art song Caro mio ben as a test piece for singers from different language backgrounds.

View Article and Find Full Text PDF

We aimed to report our experience with exoscopic keyhole clipping of unruptured middle cerebral artery aneurysms using multiple 4K 3-dimensional monitors.We performed sphenoid ridge keyhole clipping of unruptured middle cerebral artery aneurysms using the ORBEYE exoscope (Sony Olympus Medical Solutions, Inc., Tokyo, Japan) with multiple 4K 3-dimensional monitors in 19 patients in our institution from 2020 to 2023.

View Article and Find Full Text PDF