Literature DB >> 27362387

Machine Learning Techniques in Clinical Vision Sciences.

Miguel Caixinha1,2, Sandrina Nunes3,4.   

Abstract

This review presents and discusses the contribution of machine learning techniques for diagnosis and disease monitoring in the context of clinical vision science. Many ocular diseases leading to blindness can be halted or delayed when detected and treated at its earliest stages. With the recent developments in diagnostic devices, imaging and genomics, new sources of data for early disease detection and patients' management are now available. Machine learning techniques emerged in the biomedical sciences as clinical decision-support techniques to improve sensitivity and specificity of disease detection and monitoring, increasing objectively the clinical decision-making process. This manuscript presents a review in multimodal ocular disease diagnosis and monitoring based on machine learning approaches. In the first section, the technical issues related to the different machine learning approaches will be present. Machine learning techniques are used to automatically recognize complex patterns in a given dataset. These techniques allows creating homogeneous groups (unsupervised learning), or creating a classifier predicting group membership of new cases (supervised learning), when a group label is available for each case. To ensure a good performance of the machine learning techniques in a given dataset, all possible sources of bias should be removed or minimized. For that, the representativeness of the input dataset for the true population should be confirmed, the noise should be removed, the missing data should be treated and the data dimensionally (i.e., the number of parameters/features and the number of cases in the dataset) should be adjusted. The application of machine learning techniques in ocular disease diagnosis and monitoring will be presented and discussed in the second section of this manuscript. To show the clinical benefits of machine learning in clinical vision sciences, several examples will be presented in glaucoma, age-related macular degeneration, and diabetic retinopathy, these ocular pathologies being the major causes of irreversible visual impairment.

Entities:  

Keywords:  Automated diagnosis; clinical research; machine learning; pattern recognition; vision sciences

Mesh:

Year:  2016        PMID: 27362387     DOI: 10.1080/02713683.2016.1175019

Source DB:  PubMed          Journal:  Curr Eye Res        ISSN: 0271-3683            Impact factor:   2.424


  19 in total

1.  Automated detection of mild and multi-class diabetic eye diseases using deep learning.

Authors:  Rubina Sarki; Khandakar Ahmed; Hua Wang; Yanchun Zhang
Journal:  Health Inf Sci Syst       Date:  2020-10-08

2.  Automatic Detection of Diabetic Retinopathy in Retinal Fundus Photographs Based on Deep Learning Algorithm.

Authors:  Feng Li; Zheng Liu; Hua Chen; Minshan Jiang; Xuedian Zhang; Zhizheng Wu
Journal:  Transl Vis Sci Technol       Date:  2019-11-12       Impact factor: 3.283

3.  Multi-categorical deep learning neural network to classify retinal images: A pilot study employing small database.

Authors:  Joon Yul Choi; Tae Keun Yoo; Jeong Gi Seo; Jiyong Kwak; Terry Taewoong Um; Tyler Hyungtaek Rim
Journal:  PLoS One       Date:  2017-11-02       Impact factor: 3.240

4.  Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters.

Authors:  Kazuko Omodaka; Guangzhou An; Satoru Tsuda; Yukihiro Shiga; Naoko Takada; Tsutomu Kikawa; Hidetoshi Takahashi; Hideo Yokota; Masahiro Akiba; Toru Nakazawa
Journal:  PLoS One       Date:  2017-12-19       Impact factor: 3.240

Review 5.  Machine learning for epigenetics and future medical applications.

Authors:  Lawrence B Holder; M Muksitul Haque; Michael K Skinner
Journal:  Epigenetics       Date:  2017-05-19       Impact factor: 4.528

6.  A 3D Deep Learning System for Detecting Referable Glaucoma Using Full OCT Macular Cube Scans.

Authors:  Daniel B Russakoff; Suria S Mannil; Jonathan D Oakley; An Ran Ran; Carol Y Cheung; Srilakshmi Dasari; Mohammed Riyazzuddin; Sriharsha Nagaraj; Harsha L Rao; Dolly Chang; Robert T Chang
Journal:  Transl Vis Sci Technol       Date:  2020-02-18       Impact factor: 3.283

7.  Explainable Machine Learning Approach as a Tool to Understand Factors Used to Select the Refractive Surgery Technique on the Expert Level.

Authors:  Tae Keun Yoo; Ik Hee Ryu; Hannuy Choi; Jin Kuk Kim; In Sik Lee; Jung Sub Kim; Geunyoung Lee; Tyler Hyungtaek Rim
Journal:  Transl Vis Sci Technol       Date:  2020-02-12       Impact factor: 3.283

Review 8.  Applications of Artificial Intelligence to Electronic Health Record Data in Ophthalmology.

Authors:  Wei-Chun Lin; Jimmy S Chen; Michael F Chiang; Michelle R Hribar
Journal:  Transl Vis Sci Technol       Date:  2020-02-27       Impact factor: 3.283

9.  Automated algorithms combining structure and function outperform general ophthalmologists in diagnosing glaucoma.

Authors:  Leonardo Seidi Shigueoka; José Paulo Cabral de Vasconcellos; Rui Barroso Schimiti; Alexandre Soares Castro Reis; Gabriel Ozeas de Oliveira; Edson Satoshi Gomi; Jayme Augusto Rocha Vianna; Renato Dichetti Dos Reis Lisboa; Felipe Andrade Medeiros; Vital Paulino Costa
Journal:  PLoS One       Date:  2018-12-05       Impact factor: 3.240

10.  Glaucoma Diagnosis with Machine Learning Based on Optical Coherence Tomography and Color Fundus Images.

Authors:  Guangzhou An; Kazuko Omodaka; Kazuki Hashimoto; Satoru Tsuda; Yukihiro Shiga; Naoko Takada; Tsutomu Kikawa; Hideo Yokota; Masahiro Akiba; Toru Nakazawa
Journal:  J Healthc Eng       Date:  2019-02-18       Impact factor: 2.682

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