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Improved IOL Power Calculation With Femtosecond Laser Enhanced Refractive Outcome Prediction
Van Der Donckt, Jeroen; Young, Joshua A; Rademaker, Michael; Menon, Saurabh; Chang, Chin-Wen; Vandewiele, Gilles; Straker, Benjamin; Dewey, David; Dai, George; Gonzalez, Javier; Free, Joseph R; Van Hoecke, Sofie; Scott, Wendell; Tauber, Shachar; Dick, H Burkhard; Scales, Charles
PURPOSE/UNASSIGNED:The purpose of this study was to introduce and evaluate the femtosecond laser enhanced refractive outcome (FLERO) prediction method, an intraocular lens (IOL) calculator that augments Barrett Universal II (BUII) by integrating novel anterior segment optical coherence tomography (OCT) biometric predictors obtained during femtosecond laser-assisted cataract surgery (FLACS). METHODS/UNASSIGNED:Two thousand, three hundred sixty-three (2363) eyes of 1720 patients (mean age = 71.33 years, 60.26% women) undergoing FLACS were analyzed. FLERO was developed by selecting the most predictive subset of OCT-derived biometry features using a "genetic algorithm" and combining them with BUII predictions in a linear model. Internal validation was performed through cross-validation, and prediction errors (PEs) were compared with BUII and Kane errors. RESULTS/UNASSIGNED:Compared to BUII, FLERO increased the proportion of eyes achieving postoperative refraction within ±0.25 diopter (D), ±0.50 D, and ±1.00 D of target from 0.470 to 0.507, 0.781 to 0.824, and 0.962 to 0.970, respectively. Mean absolute error decreased from 0.345 D for BUII and 0.338 D for Kane to 0.315 D for FLERO. FLERO outperformed BUII and Kane across (short, medium, and long) eyes, where proportions of eyes achieving refraction within ±0.50 D were 0.696, 0.831, and 0.782 for FLERO, 0.468, 0.796, and 0.718 for BUII, and 0.595, 0.798, and 0.718 for Kane. Wilcoxon Signed-Rank testing indicated significant reductions in absolute PEs for FLERO versus BUII and Kane (P < 0.0001). PE regression revealed FLERO made significantly smaller errors. CONCLUSIONS/UNASSIGNED:FLERO enhances BUII by incorporating novel OCT-derived FLACS biometric parameters across short, medium, and long eyes. TRANSLATIONAL RELEVANCE/UNASSIGNED:FLERO combines advanced FLACS-derived intraoperative biometry with established IOL formulae to refine refractive outcome prediction.
PMID: 41235860
ISSN: 2164-2591
CID: 5965862
Internal validation of a convolutional neural network pipeline for assessing meibomian gland structure from meibography
Scales, Charles; Bai, John; Murakami, David; Young, Joshua; Cheng, Daniel; Gupta, Preeya; Claypool, Casey; Holland, Edward; Kading, David; Hauser, Whitney; O'Dell, Leslie; Osae, Eugene; Blackie, Caroline A
SIGNIFICANCE/CONCLUSIONS:Optimal meibography utilization and interpretation are hindered due to poor lid presentation, blurry images, or image artifacts and the challenges of applying clinical grading scales. These results, using the largest image dataset analyzed to date, demonstrate development of algorithms that provide standardized, real-time inference that addresses all of these limitations. PURPOSE/OBJECTIVE:This study aimed to develop and validate an algorithmic pipeline to automate and standardize meibomian gland absence assessment and interpretation. METHODS:A total of 143,476 images were collected from sites across North America. Ophthalmologist and optometrist experts established ground-truth image quality and quantification (i.e., degree of gland absence). Annotated images were allocated into training, validation, and test sets. Convolutional neural networks within Google Cloud VertexAI trained three locally deployable or edge-based predictive models: image quality detection, over-flip detection, and gland absence detection. The algorithms were combined into an algorithmic pipeline onboard a LipiScan Dynamic Meibomian Imager to provide real-time clinical inference for new images. Performance metrics were generated for each algorithm in the pipeline onboard the LipiScan from naive image test sets. RESULTS:Individual model performance metrics included the following: weighted average precision (image quality detection: 0.81, over-flip detection: 0.88, gland absence detection: 0.84), weighted average recall (image quality detection: 0.80, over-flip detection: 0.87, gland absence detection: 0.80), weighted average F1 score (image quality detection: 0.80, over-flip detection: 0.87, gland absence detection: 0.81), overall accuracy (image quality detection: 0.80, over-flip detection: 0.87, gland absence detection: 0.80), Cohen κ (image quality detection: 0.60, over-flip detection: 0.62, and gland absence detection: 0.71), Kendall τb (image quality detection: 0.61, p<0.001, over-flip detection: 0.63, p<0.001, and gland absence detection: 0.67, p<001), and Matthews coefficient (image quality detection: 0.61, over-flip detection: 0.63, and gland absence detection: 0.62). Area under the precision-recall curve (image quality detection: 0.87 over-flip detection: 0.92, gland absence detection: 0.89) and area under the receiver operating characteristic curve (image quality detection: 0.88, over-flip detection: 0.91 gland absence detection: 0.93) were calculated across a common set of thresholds, ranging from 0 to 1. CONCLUSIONS:Comparison of predictions from each model to expert panel ground-truth demonstrated strong association and moderate to substantial agreement. The findings and performance metrics show that the pipeline of algorithms provides standardized, real-time inference/prediction of meibomian gland absence.
PMID: 39792877
ISSN: 1538-9235
CID: 5780432
Machine Learning Methods Using Artificial Intelligence Deployed on Electronic Health Record Data for Identification and Referral of At-Risk Patients From Primary Care Physicians to Eye Care Specialists: Retrospective, Case-Controlled Study
Young, Joshua A; Chang, Chin-Wen; Scales, Charles W; Menon, Saurabh V; Holy, Chantal E; Blackie, Caroline Adrienne
BACKGROUND:Identification and referral of at-risk patients from primary care practitioners (PCPs) to eye care professionals remain a challenge. Approximately 1.9 million Americans suffer from vision loss as a result of undiagnosed or untreated ophthalmic conditions. In ophthalmology, artificial intelligence (AI) is used to predict glaucoma progression, recognize diabetic retinopathy (DR), and classify ocular tumors; however, AI has not yet been used to triage primary care patients for ophthalmology referral. OBJECTIVE:This study aimed to build and compare machine learning (ML) methods, applicable to electronic health records (EHRs) of PCPs, capable of triaging patients for referral to eye care specialists. METHODS:Accessing the Optum deidentified EHR data set, 743,039 patients with 5 leading vision conditions (age-related macular degeneration [AMD], visually significant cataract, DR, glaucoma, or ocular surface disease [OSD]) were exact-matched on age and gender to 743,039 controls without eye conditions. Between 142 and 182 non-ophthalmic parameters per patient were input into 5 ML methods: generalized linear model, L1-regularized logistic regression, random forest, Extreme Gradient Boosting (XGBoost), and J48 decision tree. Model performance was compared for each pathology to select the most predictive algorithm. The area under the curve (AUC) was assessed for all algorithms for each outcome. RESULTS:XGBoost demonstrated the best performance, showing, respectively, a prediction accuracy and an AUC of 78.6% (95% CI 78.3%-78.9%) and 0.878 for visually significant cataract, 77.4% (95% CI 76.7%-78.1%) and 0.858 for exudative AMD, 79.2% (95% CI 78.8%-79.6%) and 0.879 for nonexudative AMD, 72.2% (95% CI 69.9%-74.5%) and 0.803 for OSD requiring medication, 70.8% (95% CI 70.5%-71.1%) and 0.785 for glaucoma, 85.0% (95% CI 84.2%-85.8%) and 0.924 for type 1 nonproliferative diabetic retinopathy (NPDR), 82.2% (95% CI 80.4%-84.0%) and 0.911 for type 1 proliferative diabetic retinopathy (PDR), 81.3% (95% CI 81.0%-81.6%) and 0.891 for type 2 NPDR, and 82.1% (95% CI 81.3%-82.9%) and 0.900 for type 2 PDR. CONCLUSIONS:The 5 ML methods deployed were able to successfully identify patients with elevated odds ratios (ORs), thus capable of patient triage, for ocular pathology ranging from 2.4 (95% CI 2.4-2.5) for glaucoma to 5.7 (95% CI 5.0-6.4) for type 1 NPDR, with an average OR of 3.9. The application of these models could enable PCPs to better identify and triage patients at risk for treatable ophthalmic pathology. Early identification of patients with unrecognized sight-threatening conditions may lead to earlier treatment and a reduced economic burden. More importantly, such triage may improve patients' lives.
PMCID:11041486
PMID: 38875582
ISSN: 2817-1705
CID: 5669532
Fractal Dimension Analysis of OCTA Images of Diabetic Retinopathy Using Circular Mass-Radius Method
Hashmi, Shariq; Lopez, Jennifer; Chiu, Bing; Sarrafpour, Soshian; Gupta, Akash; Young, Joshua
BACKGROUND AND OBJECTIVE/OBJECTIVE:To quantify fractal dimension (FD) by mass-radius method in optical coherence tomography angiography (OCTA) images and characterize microvascular differences in eyes with and without diabetic retinopathy (DR). PATIENTS AND METHODS/METHODS:A retrospective study was conducted using OCTA images of 3 mm × 3 mm and 6 mm × 6 mm scans for superficial and deep capillary plexuses from 49 control eyes and 58 eyes with DR. RESULTS:< .05). In the 3 mm × 3 mm superficial plexus, the FD of severe nonproliferative DR (NPDR) and proliferative DR (PDR) were significantly lower compared to control. The scans of the deep plexus showed only severe NPDR was significantly reduced in the 6 mm × 6 mm scan, whereas moderate NPDR, severe NPDR, and PDR were significantly lower in the 3 mm × 3 mm scan. CONCLUSION/CONCLUSIONS:.
PMID: 34038685
ISSN: 2325-8179
CID: 4886682
Utilizing a J48 Decision Tree to identify Patients at risk for Angle Closure Glaucoma. [Meeting Abstract]
Sarrafpour, Soshian; Chiu, Bing; Parikh, Hardik; Cadena, Maria De Los Angeles Ramos; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.; Young, Joshua A.
ISI:000488628104352
ISSN: 0146-0404
CID: 4365252
Identifying Clinically Useful Markers in Glaucoma Suspects and Primary Open Angle Glaucoma Patients Using a Machine Learning J48 Decision Tree [Meeting Abstract]
Parikh, Hardik A.; Sarrafpour, Soshian; Chiu, Bing; Gupta, Akash; Cadena, Maria de los Angeles Ramos; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel; Young, Joshua A.
ISI:000488628103240
ISSN: 0146-0404
CID: 4154262
Fractal Dimension Analysis of OCTA Images in Normal and Diabetic Eyes using the Circular Mass-radius Method [Meeting Abstract]
Lopez, Jennifer; Chiu, Bing; Chiu, Harrison; Kumar, Preethi; Hashmi, Shariq; Gupta, Akash; Sarrafpour, Soshian; Young, Joshua A.
ISI:000488800704291
ISSN: 0146-0404
CID: 4154482
Sectoral first peak fractal analysis of optical coherence tomography angiography in glaucomatous eyes [Meeting Abstract]
Chong, J K; Young, A N; Chiu, B; Tsui, E; Scripsema, N K; Panarelli, J F; Sidoti, P A; Rosen, R B; Garcia, P; Young, J A
Purpose: To assess whether microvascular dropout as measured by fractal self-similarity breakdown of optical coherence tomography angiography (OCTA) occurs in a sectoral fashion in eyes with primary open angle glaucoma (POAG) compared to control patients.
Method(s): A retrospective study using OCTA images obtained on 40 eyes with POAG, and 14 control eyes. OCTA images with peripapillary scans of 4.5mm x 4.5mm diameters were obtained using RTVue XR Avanti (Optovue Inc., Fremont, CA, USA), and standardized and binarized using ImageJ (National Institutes of Health, Bethesda, Maryland, USA). Fractal dimension by means of box-counting algorithm using box sizes with increasing exponential factor of two with grid algorithm on Fractalyse (TheMA, Besancon Cedex, France) was plotted against linear box dimension and first local peak (FLP) representing smallest box size resolution before breakdown of self-similarity was recorded. The ratio of superior to inferior (SI Ratio) of FLP was the main outcome measure.
Result(s): There is significant difference between control and POAG eyes (p = 0.01), with POAG having larger superior to inferior (SI Ratio) of FLP (1.40 +/-0.93) compared to control (1.00 +/-0.0). The increased SI FLP ratio of the POAG eyes reflects a preferential loss of self-similarity in the superior quadrant (i.e. higher FLP values) rather than increased self-similarity in the inferior quadrant (FLP inferior = 8.0 +/-0 and FLP superior = 11.2 +/-7.4 in POAG, FLP inferior = 8.0 +/-0 and FLP superior = 8.0 +/-0 in controls).
Conclusion(s): The measurement of box size of the first local maximum of fractal dimension as a function of increasing box size represents the smallest box size resolution prior to loss of uniformity of the vascular pattern's fractal dimension. While this loss of uniformity may be related to resolution in normal eyes, the preferential loss of microvascular complexity inferior to the optic disc in POAG eyes suggests asymmetric small vessel dropout in the POAG. This accords well with the asymmetric loss demonstrated in a prior OCTA study. Our study was not designed to determine whether microvascular loss occurred as a consequence or as a cause of axonal loss. We propose FLP SI Ratio as a useful measure of POAG-associated microvascular dropout
EMBASE:628536316
ISSN: 1552-5783
CID: 4001722
Predicting Refractive Outcome of Small Incision Lenticule Extraction for Myopia Using Corneal Properties
Wang, Mengyu; Zhang, Yaohua; Wu, Wenjing; Young, Joshua A; Hatch, Kathryn M; Pineda, Roberto; Elze, Tobias; Wang, Yan
Purpose/UNASSIGNED:To investigate whether preoperative corneal topographic and biomechanical parameters (CTBPs) predict postoperative residual refractive error (RRE). Methods/UNASSIGNED:We retrospectively included 151 eyes from 151 patients of small-incision lenticule extraction (SMILE) with target RRE of plano and 3-month measurements of refractive error from Tianjin Eye Hospital. Multivariate linear/logistic regressions were performed to associate age, gender, preoperative refractive error, lenticule thickness, and CTBPs with postoperative RRE/the occurrence of myopic RRE ≤ -0.25 diopter (D). Stepwise regression was used for feature selection. Leave-one-cross-validation was used for model evaluation by the area under the receiver operating characteristic curve (AUC). Results/UNASSIGNED:< 0.001) improved the AUC performance to 0.771 from 0.615. Conclusions/UNASSIGNED:Postoperative outcomes of SMILE can be predicted by individual CTBPs. Translational Relevance/UNASSIGNED:Our findings could be used to customize a refractive nomogram based on individual corneal properties improving outcomes and patient satisfaction.
PMID: 30271678
ISSN: 2164-2591
CID: 3328902
"Eye Dropping"-A Case Report of Transconjunctival Lysergic Acid Diethylamide Drug Abuse
Lo, Danielle; Cobbs, Lucy; Chua, Michael; Young, Joshua; Haberman, Ilyse D; Modi, Yasha
PURPOSE/OBJECTIVE:To report a case of bilateral toxic corneal and conjunctival epitheliopathy secondary to administration of filter paper impregnated with lysergic acid diethylamide (LSD) in the inferior conjunctival fornices. METHODS:This is a single case report of an 18-year-old man who presented to the emergency department with acute, bilateral eye pain and redness of 24 hours. The patient admitted to placing folded strips of blotting paper impregnated with LSD into the inferior fornices of his eyes the previous night. RESULTS:The patient was found to have localized bilateral corneal and conjunctival abrasions with underlying subconjunctival hemorrhage. Conjunctival abrasion was "kissing," involving the bulbar and palpebral conjunctiva, corresponding to the presumed location of the filter paper. There was no corneal stromal opacification. He was lost to follow up within 1 week of initial presentation but stated that his symptoms improved. CONCLUSIONS:To the best of our knowledge, this is the first reported case of bilateral hemorrhagic conjunctival abrasion and corneal abrasion secondary to LSD. "Kissing" conjunctival lesions, which have been previously reported with heroin use, should raise suspicion for drug abuse.
PMID: 30004961
ISSN: 1536-4798
CID: 3192722