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Latent Supervision: A Method for Improved Performance and Calibration of Machine Learning Classification Models in

Hady Yazbeck1, Jad Assaf1, Tom M Lietman2

  • 1Casey Eye Institute, Oregon Health & Science University, Portland, Oregon.

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Summary

Latent supervision, a novel AI algorithm, improves ophthalmic classifier accuracy by using probabilistic labels to account for diagnostic uncertainty. This method enhances both classification performance and model calibration in clinical settings.

Keywords:
Artificial intelligenceInfectious keratitisLatent class analysisTrachoma

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Area of Science:

  • Ophthalmic artificial intelligence
  • Medical diagnostics
  • Machine learning

Background:

  • Standard supervised learning models assume deterministic labels, overlooking clinical diagnostic uncertainty.
  • Ophthalmic artificial intelligence classifiers require methods that can handle uncertainty for improved accuracy and calibration.

Purpose of the Study:

  • To introduce latent supervision, a novel algorithm using latent class analysis.
  • To incorporate multiple diagnostic tests or expert opinions for probabilistic labels (soft labels).
  • To develop more accurate and calibrated ophthalmic artificial intelligence classifiers.

Main Methods:

  • Compared latent supervision against standard supervised learning in two computer vision scenarios: trachoma screening and infectious keratitis diagnosis.
  • Utilized probabilistic labels derived from multiple grader teams for trachoma screening.
  • Employed labels from culture and smear results for infectious keratitis pathogen differentiation.

Main Results:

  • Latent supervision achieved a higher area under the receiver operating characteristic curve (0.94) in trachoma screening compared to ensemble supervised models (0.93).
  • In infectious keratitis, latent supervision demonstrated consistent performance (area under the receiver operating characteristic curve 0.86) across bacterial and fungal differentiation.
  • Latent supervision models exhibited superior calibration in both scenarios.

Conclusions:

  • Latent supervision offers a computationally inexpensive approach to train AI models using probabilistic labels that capture diagnostic uncertainty.
  • The method enhances both classification performance and model calibration, crucial for clinical trust and implementation.
  • Latent supervision shows promise for improving AI applications in medicine by addressing inherent diagnostic uncertainties.