Literature DB >> 28762339

Deep learning for single-molecule science.

Tim Albrecht1, Gregory Slabaugh, Eduardo Alonso, S M Masudur R Al-Arif.   

Abstract

Exploring and making predictions based on single-molecule data can be challenging, not only due to the sheer size of the datasets, but also because a priori knowledge about the signal characteristics is typically limited and poor signal-to-noise ratio. For example, hypothesis-driven data exploration, informed by an expectation of the signal characteristics, can lead to interpretation bias or loss of information. Equally, even when the different data categories are known, e.g., the four bases in DNA sequencing, it is often difficult to know how to make best use of the available information content. The latest developments in machine learning (ML), so-called deep learning (DL) offer interesting, new avenues to address such challenges. In some applications, such as speech and image recognition, DL has been able to outperform conventional ML strategies and even human performance. However, to date DL has not been applied much in single-molecule science, presumably in part because relatively little is known about the 'internal workings' of such DL tools within single-molecule science as a field. In this Tutorial, we make an attempt to illustrate in a step-by-step guide how one of those, a convolutional neural network (CNN), may be used for base calling in DNA sequencing applications. We compare it with a SVM as a more conventional ML method, and discuss some of the strengths and weaknesses of the approach. In particular, a 'deep' neural network has many features of a 'black box', which has important implications on how we look at and interpret data.

Entities:  

Year:  2017        PMID: 28762339     DOI: 10.1088/1361-6528/aa8334

Source DB:  PubMed          Journal:  Nanotechnology        ISSN: 0957-4484            Impact factor:   3.874


  9 in total

Review 1.  Automating drug discovery.

Authors:  Gisbert Schneider
Journal:  Nat Rev Drug Discov       Date:  2017-12-15       Impact factor: 84.694

Review 2.  Machine learning-enabled multiplexed microfluidic sensors.

Authors:  Sajjad Rahmani Dabbagh; Fazle Rabbi; Zafer Doğan; Ali Kemal Yetisen; Savas Tasoglu
Journal:  Biomicrofluidics       Date:  2020-12-11       Impact factor: 2.800

Review 3.  A New Frontier: The Convergence of Nanotechnology, Brain Machine Interfaces, and Artificial Intelligence.

Authors:  Gabriel A Silva
Journal:  Front Neurosci       Date:  2018-11-16       Impact factor: 4.677

4.  QuipuNet: Convolutional Neural Network for Single-Molecule Nanopore Sensing.

Authors:  Karolis Misiunas; Niklas Ermann; Ulrich F Keyser
Journal:  Nano Lett       Date:  2018-06-01       Impact factor: 11.189

5.  Study of the Application of Deep Convolutional Neural Networks (CNNs) in Processing Sensor Data and Biomedical Images.

Authors:  Weijun Hu; Yan Zhang; Lijie Li
Journal:  Sensors (Basel)       Date:  2019-08-17       Impact factor: 3.576

Review 6.  Nanostructures for Biosensing, with a Brief Overview on Cancer Detection, IoT, and the Role of Machine Learning in Smart Biosensors.

Authors:  Aishwaryadev Banerjee; Swagata Maity; Carlos H Mastrangelo
Journal:  Sensors (Basel)       Date:  2021-02-10       Impact factor: 3.576

Review 7.  Deep Learning-Enabled Technologies for Bioimage Analysis.

Authors:  Fazle Rabbi; Sajjad Rahmani Dabbagh; Pelin Angin; Ali Kemal Yetisen; Savas Tasoglu
Journal:  Micromachines (Basel)       Date:  2022-02-06       Impact factor: 2.891

Review 8.  Trusting our machines: validating machine learning models for single-molecule transport experiments.

Authors:  William Bro-Jørgensen; Joseph M Hamill; Rasmus Bro; Gemma C Solomon
Journal:  Chem Soc Rev       Date:  2022-08-15       Impact factor: 60.615

9.  Rational Design of Field-Effect Sensors Using Partial Differential Equations, Bayesian Inversion, and Artificial Neural Networks.

Authors:  Amirreza Khodadadian; Maryam Parvizi; Mohammad Teshnehlab; Clemens Heitzinger
Journal:  Sensors (Basel)       Date:  2022-06-24       Impact factor: 3.847

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.