4.5 Article

Comparison of Machine Learning Methods Using Spectralis OCT for Diagnosis and Disability Progression Prognosis in Multiple Sclerosis

Journal

ANNALS OF BIOMEDICAL ENGINEERING
Volume 50, Issue 5, Pages 507-528

Publisher

SPRINGER
DOI: 10.1007/s10439-022-02930-3

Keywords

Multiple sclerosis; Machine learning; Optical coherence tomography; Retinal nerve fiber layer

Funding

  1. Spanish Ministry of Economy and Competitiveness [DPI 2016-79302-R]
  2. Spanish Ministry of Science, Innovation and Universities [BES-2017-080384]
  3. Instituto de Salud Carlos III [PI17/01726]

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Machine learning approaches using optical coherence tomography (OCT) for measuring retinal nerve fiber layer (RNFL) thickness can be used for the diagnosis and prognosis of multiple sclerosis (MS). The study found that the best acquisition protocol for MS diagnosis was the fast macular thickness protocol, achieving high accuracy, sensitivity, specificity, precision, and AUC. The measurements of RNFL thickness obtained with Spectralis OCT were also shown to have predictive value for disability progression in MS patients.
Machine learning approaches in diagnosis and prognosis of multiple sclerosis (MS) were analysed using retinal nerve fiber layer (RNFL) thickness, measured by optical coherence tomography (OCT). A cross-sectional study (72 MS patients and 30 healthy controls) was used for diagnosis. These 72 MS patients were involved in a 10-year longitudinal follow-up study for prognostic purposes. Structural measurements of RNFL thickness were performed using different Spectralis OCT protocols: fast macular thickness protocol to measure macular RNFL, and fast RNFL thickness protocol and fast RNFL-N thickness protocol to measure peripapillary RNFL. Binary classifiers such as multiple linear regression (MLR), support vector machines (SVM), decision tree (DT), k-nearest neighbours (k-NN), Naive Bayes (NB), ensemble classifier (EC) and long short-term memory (LSTM) recurrent neural network were tested. For MS diagnosis, the best acquisition protocol was fast macular thickness protocol using k-NN (accuracy: 95.8%; sensitivity: 94.4%; specificity: 97.2%; precision: 97.1%; AUC: 0.958). For MS prognosis, our model with a 3-year follow up to predict disability progression 8 years later was the best predictive model. DT performed best for fast macular thickness protocol (accuracy: 91.3%; sensitivity: 90.0%; specificity: 92.5%; precision: 92.3%; AUC: 0.913) and SVM for fast RNFL-N thickness protocol (accuracy: 91.3%; sensitivity: 87.5%; specificity: 95.0%; precision: 94.6%; AUC: 0.913). This work concludes that measurements of RNFL thickness obtained with Spectralis OCT have a good ability to diagnose MS and to predict disability progression in MS patients. This machine learning approach would help clinicians to have valuable information.

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