Faster Deep Ensemble Averaging for Quantification of DNA Damage from Comet Assay Images With Uncertainty Estimates

12/23/2021
by   Srikanth Namuduri, et al.
0

Several neurodegenerative diseases involve the accumulation of cellular DNA damage. Comet assays are a popular way of estimating the extent of DNA damage. Current literature on the use of deep learning to quantify DNA damage presents an empirical approach to hyper-parameter optimization and does not include uncertainty estimates. Deep ensemble averaging is a standard approach to estimating uncertainty but it requires several iterations of network training, which makes it time-consuming. Here we present an approach to quantify the extent of DNA damage that combines deep learning with a rigorous and comprehensive method to optimize the hyper-parameters with the help of statistical tests. We also use an architecture that allows for a faster computation of deep ensemble averaging and performs statistical tests applicable to networks using transfer learning. We applied our approach to a comet assay dataset with more than 1300 images and achieved an R^2 of 0.84, where the output included the confidence interval for each prediction. The proposed architecture is an improvement over the current approaches since it speeds up the uncertainty estimation by 30X while being statistically more rigorous.

READ FULL TEXT
research
07/18/2019

Post-Earthquake Assessment of Buildings Using Deep Learning

Classification of the extent of damage suffered by a building in a seism...
research
05/07/2021

Probabilistic Modeling of Hurricane Wind-Induced Damage in Infrastructure Systems

This paper presents a modeling approach for probabilistic estimation of ...
research
01/05/2023

Stochastics of DNA Quantification

A common approach to quantifying DNA involves repeated cycles of DNA amp...
research
10/12/2020

Automatic Quantification of Settlement Damage using Deep Learning of Satellite Images

Humanitarian disasters and political violence cause significant damage t...
research
01/04/2022

Graph Neural Networks for Double-Strand DNA Breaks Prediction

Double-strand DNA breaks (DSBs) are a form of DNA damage that can cause ...
research
02/26/2018

AI4AI: Quantitative Methods for Classifying Host Species from Avian Influenza DNA Sequence

Avian Influenza breakouts cause millions of dollars in damage each year ...
research
11/29/2022

UQ-ARMED: Uncertainty quantification of adversarially-regularized mixed effects deep learning for clustered non-iid data

This work demonstrates the ability to produce readily interpretable stat...

Please sign up or login with your details

Forgot password? Click here to reset