TY - JOUR
T1 - Machine Learning Approach for Intraocular Disease Prediction Based on Aqueous Humor Immune Mediator Profiles
AU - Nezu, Naoya
AU - Usui, Yoshihiko
AU - Saito, Akira
AU - Shimizu, Hiroyuki
AU - Asakage, Masaki
AU - Yamakawa, Naoyuki
AU - Tsubota, Kinya
AU - Wakabayashi, Yoshihiro
AU - Narimatsu, Akitomo
AU - Umazume, Kazuhiko
AU - Maruyama, Katsuhiko
AU - Sugimoto, Masahiro
AU - Kuroda, Masahiko
AU - Goto, Hiroshi
N1 - Funding Information:
Y.U.: Lecturer – AbbVie, Inc., Eisai, Co Ltd., and Santen, Inc. H.G.: Consultant – AbbVie. Supported by the Ministry of Education, Culture, Sports, Science and Technology of Japan (Grants-in-Aid for Scientific Research nos.: 16K11330 , 19K09981 , and 19K09959 ); Bayer Yakuhin , Ltd.; and the Charitable Trust Fund of Ophthalmic Research in Commemoration of Santen Pharmaceutical’s Founder.
Funding Information:
Y.U.: Lecturer – AbbVie, Inc., Eisai, Co Ltd., and Santen, Inc. H.G.: Consultant – AbbVie. Supported by the Ministry of Education, Culture, Sports, Science and Technology of Japan (Grants-in-Aid for Scientific Research nos.: 16K11330, 19K09981, and 19K09959); Bayer Yakuhin, Ltd.; and the Charitable Trust Fund of Ophthalmic Research in Commemoration of Santen Pharmaceutical's Founder. Obtained funding: Usui
Publisher Copyright:
© 2021 American Academy of Ophthalmology
PY - 2021/8
Y1 - 2021/8
N2 - Purpose: Various immune mediators have crucial roles in the pathogenesis of intraocular diseases. Machine learning can be used to automatically select and weigh various predictors to develop models maximizing predictive power. However, these techniques have not yet been applied extensively in studies focused on intraocular diseases. We evaluated whether 5 machine learning algorithms applied to the data of immune-mediator levels in aqueous humor can predict the actual diagnoses of 17 selected intraocular diseases and identified which immune mediators drive the predictive power of a machine learning model. Design: Cross-sectional study. Participants: Five hundred twelve eyes with diagnoses from among 17 intraocular diseases. Methods: Aqueous humor samples were collected, and the concentrations of 28 immune mediators were determined using a cytometric bead array. Each immune mediator was ranked according to its importance using 5 machine learning algorithms. Stratified k-fold cross-validation was used in evaluation of algorithms with the dataset divided into training and test datasets. Main Outcome Measures: The algorithms were evaluated in terms of precision, recall, accuracy, F-score, area under the receiver operating characteristic curve, area under the precision-recall curve, and mean decrease in Gini index. Results: Among the 5 machine learning models, random forest (RF) yielded the highest classification accuracy in multiclass differentiation of 17 intraocular diseases. The RF prediction models for vitreoretinal lymphoma, acute retinal necrosis, endophthalmitis, rhegmatogenous retinal detachment, and primary open-angle glaucoma achieved the highest classification accuracy, precision, and recall. Random forest recognized vitreoretinal lymphoma, acute retinal necrosis, endophthalmitis, rhegmatogenous retinal detachment, and primary open-angle glaucoma with the top 5 F-scores. The 3 highest-ranking relevant immune mediators were interleukin (IL)-10, interferon-γ-inducible protein (IP)-10, and angiogenin for prediction of vitreoretinal lymphoma; monokine induced by interferon γ, interferon γ, and IP-10 for acute retinal necrosis; and IL-6, granulocyte colony-stimulating factor, and IL-8 for endophthalmitis. Conclusions: Random forest algorithms based on 28 immune mediators in aqueous humor successfully predicted the diagnosis of vitreoretinal lymphoma, acute retinal necrosis, and endophthalmitis. Overall, the findings of the present study contribute to increased knowledge on new biomarkers that potentially can facilitate diagnosis of intraocular diseases in the future.
AB - Purpose: Various immune mediators have crucial roles in the pathogenesis of intraocular diseases. Machine learning can be used to automatically select and weigh various predictors to develop models maximizing predictive power. However, these techniques have not yet been applied extensively in studies focused on intraocular diseases. We evaluated whether 5 machine learning algorithms applied to the data of immune-mediator levels in aqueous humor can predict the actual diagnoses of 17 selected intraocular diseases and identified which immune mediators drive the predictive power of a machine learning model. Design: Cross-sectional study. Participants: Five hundred twelve eyes with diagnoses from among 17 intraocular diseases. Methods: Aqueous humor samples were collected, and the concentrations of 28 immune mediators were determined using a cytometric bead array. Each immune mediator was ranked according to its importance using 5 machine learning algorithms. Stratified k-fold cross-validation was used in evaluation of algorithms with the dataset divided into training and test datasets. Main Outcome Measures: The algorithms were evaluated in terms of precision, recall, accuracy, F-score, area under the receiver operating characteristic curve, area under the precision-recall curve, and mean decrease in Gini index. Results: Among the 5 machine learning models, random forest (RF) yielded the highest classification accuracy in multiclass differentiation of 17 intraocular diseases. The RF prediction models for vitreoretinal lymphoma, acute retinal necrosis, endophthalmitis, rhegmatogenous retinal detachment, and primary open-angle glaucoma achieved the highest classification accuracy, precision, and recall. Random forest recognized vitreoretinal lymphoma, acute retinal necrosis, endophthalmitis, rhegmatogenous retinal detachment, and primary open-angle glaucoma with the top 5 F-scores. The 3 highest-ranking relevant immune mediators were interleukin (IL)-10, interferon-γ-inducible protein (IP)-10, and angiogenin for prediction of vitreoretinal lymphoma; monokine induced by interferon γ, interferon γ, and IP-10 for acute retinal necrosis; and IL-6, granulocyte colony-stimulating factor, and IL-8 for endophthalmitis. Conclusions: Random forest algorithms based on 28 immune mediators in aqueous humor successfully predicted the diagnosis of vitreoretinal lymphoma, acute retinal necrosis, and endophthalmitis. Overall, the findings of the present study contribute to increased knowledge on new biomarkers that potentially can facilitate diagnosis of intraocular diseases in the future.
KW - Aqueous humor
KW - disease prediction
KW - Immune mediator
KW - Machine learning
KW - Random forest
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U2 - 10.1016/j.ophtha.2021.01.019
DO - 10.1016/j.ophtha.2021.01.019
M3 - Article
C2 - 33484732
AN - SCOPUS:85101679005
SN - 0161-6420
VL - 128
SP - 1197
EP - 1208
JO - Ophthalmology
JF - Ophthalmology
IS - 8
ER -