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Transl Vis Sci TechnolAugust 20242 citations

Detecting Visual Field Worsening From Optic Nerve Head and Macular Optical Coherence Tomography Thickness Measurements.

Pham Alex T, Pan Annabelle A, Bradley Chris, Hou Kaihua, Herbert Patrick, Johnson Chris, Wall Michael, Yohannan Jithin


AI Summary

This study found OCT's cp-RNFL best predicts early glaucoma worsening, while GC-IPL is better for later stages. Combining both offers minimal extra benefit for detecting progression.

Abstract

Purpose

Compare the use of optic disc and macular optical coherence tomography measurements to predict glaucomatous visual field (VF) worsening.

Methods

Machine learning and statistical models were trained on 924 eyes (924 patients) with circumpapillary retinal nerve fiber layer (cp-RNFL) or ganglion cell inner plexiform layer (GC-IPL) thickness measurements. The probability of 24-2 VF worsening was predicted using both trend-based and event-based progression definitions of VF worsening. Additionally, the cp-RNFL and GC-IPL predictions were combined to produce a combined prediction. A held-out test set of 617 eyes was used to calculate the area under the curve (AUC) to compare cp-RNFL, GC-IPL, and combined predictions.

Results

The AUCs for cp-RNFL, GC-IPL, and combined predictions with the statistical and machine learning models were 0.72, 0.69, 0.73, and 0.78, 0.75, 0.81, respectively, when using trend-based analysis as ground truth. The differences in performance between the cp-RNFL, GC-IPL, and combined predictions were not statistically significant. AUCs were highest in glaucoma suspects using cp-RNFL predictions and highest in moderate/advanced glaucoma using GC-IPL predictions. The AUCs for the statistical and machine learning models were 0.63, 0.68, 0.69, and 0.72, 0.69, 0.73, respectively, when using event-based analysis. AUCs decreased with increasing disease severity for all predictions.

Conclusions

cp-RNFL and GC-IPL similarly predicted VF worsening overall, but cp-RNFL performed best in early glaucoma stages and GC-IPL in later stages. Combining both did not enhance detection significantly.

Translational relevance: cp-RNFL best predicted trend-based 24-2 VF progression in early-stage disease, while GC-IPL best predicted progression in late-stage disease. Combining both features led to minimal improvement in predicting progression.


MeSH Terms

HumansTomography, Optical CoherenceFemaleOptic DiskMaleVisual FieldsMiddle AgedDisease ProgressionGlaucomaRetinal Ganglion CellsMachine LearningAgedNerve FibersArea Under CurveMacula LuteaVision Disorders

Key Concepts5

The area under the curve (AUC) for circumpapillary retinal nerve fiber layer (cp-RNFL) thickness measurements, ganglion cell inner plexiform layer (GC-IPL) thickness measurements, and combined predictions with statistical and machine learning models were 0.72, 0.69, 0.73, and 0.78, 0.75, 0.81, respectively, when using trend-based analysis as ground truth for predicting 24-2 visual field (VF) worsening.

PrognosisCohortMachine learning and statistical model training on existing datan=924 eyes (924 patients) for training,…Ch5Ch6Ch11

The differences in performance between circumpapillary retinal nerve fiber layer (cp-RNFL) thickness measurements, ganglion cell inner plexiform layer (GC-IPL) thickness measurements, and combined predictions were not statistically significant for predicting visual field (VF) worsening.

Comparative EffectivenessCohortMachine learning and statistical model training on existing datan=924 eyes (924 patients) for training,…Ch5Ch6Ch11

The area under the curve (AUCs) for predicting visual field (VF) worsening were highest in glaucoma suspects using circumpapillary retinal nerve fiber layer (cp-RNFL) thickness measurements and highest in moderate/advanced glaucoma using ganglion cell inner plexiform layer (GC-IPL) thickness measurements.

PrognosisCohortMachine learning and statistical model training on existing datan=924 eyes (924 patients) for training,…Ch5Ch6Ch11

The area under the curve (AUCs) for the statistical and machine learning models were 0.63, 0.68, 0.69, and 0.72, 0.69, 0.73, respectively, when using event-based analysis for predicting visual field (VF) worsening.

PrognosisCohortMachine learning and statistical model training on existing datan=924 eyes (924 patients) for training,…Ch5Ch6Ch11

The area under the curve (AUCs) decreased with increasing disease severity for all predictions of visual field (VF) worsening.

PrognosisCohortMachine learning and statistical model training on existing datan=924 eyes (924 patients) for training,…Ch5Ch6Ch11

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