Literature DB >> 33574359

Predicting intraocular pressure using systemic variables or fundus photography with deep learning in a health examination cohort.

Kaori Ishii1, Ryo Asaoka2,3,4, Takashi Omoto5, Shingo Mitaki6, Yuri Fujino1,7, Hiroshi Murata5, Keiichi Onoda6,8, Atsushi Nagai6, Shuhei Yamaguchi6, Akira Obana1,9, Masaki Tanito7.   

Abstract

The purpose of the current study was to predict intraocular pressure (IOP) using color fundus photography with a deep learning (DL) model, or, systemic variables with a multivariate linear regression model (MLM), along with least absolute shrinkage and selection operator regression (LASSO), support vector machine (SVM), and Random Forest: (RF). Training dataset included 3883 examinations from 3883 eyes of 1945 subjects and testing dataset 289 examinations from 289 eyes from 146 subjects. With the training dataset, MLM was constructed to predict IOP using 35 systemic variables and 25 blood measurements. A DL model was developed to predict IOP from color fundus photographs. The prediction accuracy of each model was evaluated through the absolute error and the marginal R-squared (mR2), using the testing dataset. The mean absolute error with MLM was 2.29 mmHg, which was significantly smaller than that with DL (2.70 dB). The mR2 with MLM was 0.15, whereas that with DL was 0.0066. The mean absolute error (between 2.24 and 2.30 mmHg) and mR2 (between 0.11 and 0.15) with LASSO, SVM and RF were similar to or poorer than MLM. A DL model to predict IOP using color fundus photography proved far less accurate than MLM using systemic variables.

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Year:  2021        PMID: 33574359      PMCID: PMC7878799          DOI: 10.1038/s41598-020-80839-4

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  62 in total

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Authors:  S D McLeod; S K West; H A Quigley; J L Fozard
Journal:  Invest Ophthalmol Vis Sci       Date:  1990-11       Impact factor: 4.799

2.  Performance comparison of machine learning algorithms and number of independent components used in fMRI decoding of belief vs. disbelief.

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Journal:  Neuroimage       Date:  2010-11-10       Impact factor: 6.556

3.  Intraocular pressure in an ophthalmologically normal Japanese population.

Authors:  Shima Fukuoka; Makoto Aihara; Aiko Iwase; Makoto Araie
Journal:  Acta Ophthalmol       Date:  2007-11-26       Impact factor: 3.761

4.  The distribution of intraocular pressure and its association with metabolic syndrome in a community.

Authors:  Sang-shin Park; Eun-Hee Lee; Ganchimeg Jargal; Domyung Paek; Sung-il Cho
Journal:  J Prev Med Public Health       Date:  2010-03

5.  Elevated intraocular pressure is associated with insulin resistance and metabolic syndrome.

Authors:  Sang Woo Oh; Sangyeoup Lee; Cheolyoung Park; Dong Jun Kim
Journal:  Diabetes Metab Res Rev       Date:  2005 Sep-Oct       Impact factor: 4.876

6.  Development and Validation of Deep Learning Models for Screening Multiple Abnormal Findings in Retinal Fundus Images.

Authors:  Jaemin Son; Joo Young Shin; Hoon Dong Kim; Kyu-Hwan Jung; Kyu Hyung Park; Sang Jun Park
Journal:  Ophthalmology       Date:  2019-05-31       Impact factor: 12.079

7.  The number of people with glaucoma worldwide in 2010 and 2020.

Authors:  H A Quigley; A T Broman
Journal:  Br J Ophthalmol       Date:  2006-03       Impact factor: 4.638

8.  Validation of a Deep Learning Model to Screen for Glaucoma Using Images from Different Fundus Cameras and Data Augmentation.

Authors:  Ryo Asaoka; Masaki Tanito; Naoto Shibata; Keita Mitsuhashi; Kenichi Nakahara; Yuri Fujino; Masato Matsuura; Hiroshi Murata; Kana Tokumo; Yoshiaki Kiuchi
Journal:  Ophthalmol Glaucoma       Date:  2019-04-01

9.  Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning.

Authors:  Ryan Poplin; Avinash V Varadarajan; Katy Blumer; Yun Liu; Michael V McConnell; Greg S Corrado; Lily Peng; Dale R Webster
Journal:  Nat Biomed Eng       Date:  2018-02-19       Impact factor: 25.671

10.  The association between intraocular pressure and predictors of coronary heart disease risk in Koreans.

Authors:  Yong-Wha Lee; Won-Ki Min; Sail Chun; Woochang Lee; Yunhee Kim; Sung Hoon Chun; Hyosoon Park; Hee Bong Shin; You Kyoung Lee
Journal:  J Korean Med Sci       Date:  2008-02       Impact factor: 2.153

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  1 in total

1.  Machine learning predicting myopic regression after corneal refractive surgery using preoperative data and fundus photography.

Authors:  Juntae Kim; Ik Hee Ryu; Jin Kuk Kim; In Sik Lee; Hong Kyu Kim; Eoksoo Han; Tae Keun Yoo
Journal:  Graefes Arch Clin Exp Ophthalmol       Date:  2022-06-24       Impact factor: 3.535

  1 in total

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