scholarly journals Method for the Assessment of Effects of a Range of Wavelengths and Intensities of Red/near-infrared Light Therapy on Oxidative Stress In Vitro

Author(s):  
Marcus K. Giacci ◽  
Nathan S. Hart ◽  
Richard V. Hartz ◽  
Alan R. Harvey ◽  
Stuart I. Hodgetts ◽  
...  
2020 ◽  
Vol 6 (44) ◽  
pp. eabb6165
Author(s):  
Lukas Pfeifer ◽  
Nong V. Hoang ◽  
Maximilian Scherübl ◽  
Maxim S. Pshenichnikov ◽  
Ben L. Feringa

Light-controlled artificial molecular machines hold tremendous potential to revolutionize molecular sciences as autonomous motion allows the design of smart materials and systems whose properties can respond, adapt, and be modified on command. One long-standing challenge toward future applicability has been the need to develop methods using low-energy, low-intensity, near-infrared light to power these nanomachines. Here, we describe a rotary molecular motor sensitized by a two-photon absorber, which efficiently operates under near-infrared light at intensities and wavelengths compatible with in vivo studies. Time-resolved spectroscopy was used to gain insight into the mechanism of energy transfer to the motor following initial two-photon excitation. Our results offer prospects toward in vitro and in vivo applications of artificial molecular motors.


2020 ◽  
Vol 19 (10) ◽  
pp. 1455-1459
Author(s):  
Catherine Rono ◽  
Tiffany R Oliver

The goal of this study was to characterize the effect of near-infrared light exposure on mitochondrial membrane potential, in vitro.


2010 ◽  
Vol 27 (11) ◽  
pp. 2107-2119 ◽  
Author(s):  
Melinda Fitzgerald ◽  
Carole A. Bartlett ◽  
Sophie C. Payne ◽  
Nathan S. Hart ◽  
Jenny Rodger ◽  
...  

2011 ◽  
Vol 22 (45) ◽  
pp. 455101 ◽  
Author(s):  
Whitney M Prickett ◽  
Brent D Van Rite ◽  
Daniel E Resasco ◽  
Roger G Harrison

Neuroreport ◽  
2010 ◽  
Vol 21 (9) ◽  
pp. 662-666 ◽  
Author(s):  
Elizabeth J. Katz ◽  
Ilko K. Ilev ◽  
Victor Krauthamer ◽  
Do Hyun Kim ◽  
Daniel Weinreich

Nephron Extra ◽  
2011 ◽  
Vol 1 (1) ◽  
pp. 224-234 ◽  
Author(s):  
Jinhwan Lim ◽  
Vincent H. Gattone, II ◽  
Rachel Sinders ◽  
Caroline A. Miller ◽  
Yun Liang ◽  
...  

2021 ◽  
Vol 10 (5) ◽  
pp. 961 ◽  
Author(s):  
Agnes Holtkamp ◽  
Karim Elhennawy ◽  
José E. Cejudo Grano de Oro ◽  
Joachim Krois ◽  
Sebastian Paris ◽  
...  

Objectives: The present study aimed to train deep convolutional neural networks (CNNs) to detect caries lesions on Near-Infrared Light Transillumination (NILT) imagery obtained either in vitro or in vivo and to assess the models’ generalizability. Methods: In vitro, 226 extracted posterior permanent human teeth were mounted in a diagnostic model in a dummy head. Then, NILT images were generated (DIAGNOcam, KaVo, Biberach), and images were segmented tooth-wise. In vivo, 1319 teeth from 56 patients were obtained and segmented similarly. Proximal caries lesions were annotated pixel-wise by three experienced dentists, reviewed by a fourth dentist, and then transformed into binary labels. We trained ResNet classification models on both in vivo and in vitro datasets and used 10-fold cross-validation for estimating the performance and generalizability of the models. We used GradCAM to increase explainability. Results: The tooth-level prevalence of caries lesions was 41% in vitro and 49% in vivo, respectively. Models trained and tested on in vivo data performed significantly better (mean ± SD accuracy: 0.78 ± 0.04) than those trained and tested on in vitro data (accuracy: 0.64 ± 0.15; p < 0.05). When tested in vitro, the models trained in vivo showed significantly lower accuracy (0.70 ± 0.01; p < 0.01). Similarly, when tested in vivo, models trained in vitro showed significantly lower accuracy (0.61 ± 0.04; p < 0.05). In both cases, this was due to decreases in sensitivity (by −27% for models trained in vivo and −10% for models trained in vitro). Conclusions: Using in vitro setups for generating NILT imagery and training CNNs comes with low accuracy and generalizability. Clinical significance: Studies employing in vitro imagery for developing deep learning models should be critically appraised for their generalizability. Applicable deep learning models for assessing NILT imagery should be trained on in vivo data.


Sign in / Sign up

Export Citation Format

Share Document