Eye-tracking can offer a novel clinical practice and a non-invasive tool to detect neuropathological syndromes. In this paper, we show some analysis on data obtained from the visual sequential search test. Indeed, such a test can be used to evaluate the capacity of looking at objects in a specific order, and its successful execution requires the optimization of the perceptual resources of foveal and extrafoveal vision. The main objective of this work is to detect if some patterns can be found within the data, to discern among people with chronic pain, extrapyramidal patients and healthy controls. We employed statistical tests to evaluate differences among groups, considering three novel indicators: blinking rate, average blinking duration and maximum pupil size variation. Additionally, to divide the three patient groups based on scan-path images—which appear very noisy and all similar to each other—we applied deep learning techniques to embed them into a larger transformed space. We then applied a clustering approach to correctly detect and classify the three cohorts. Preliminary experiments show promising results.

A Mixed Statistical and Machine Learning Approach for the Analysis of Multimodal Trail Making Test Data / N. Pancino, C. Graziani, V. Lachi, M.L. Sampoli, E. Ștefǎnescu, M. Bianchini, G.M. Dimitri. - In: MATHEMATICS. - ISSN 2227-7390. - 9:24(2021), pp. 3159.1-3159.14. [10.3390/math9243159]

A Mixed Statistical and Machine Learning Approach for the Analysis of Multimodal Trail Making Test Data

G.M. Dimitri
Ultimo
2021

Abstract

Eye-tracking can offer a novel clinical practice and a non-invasive tool to detect neuropathological syndromes. In this paper, we show some analysis on data obtained from the visual sequential search test. Indeed, such a test can be used to evaluate the capacity of looking at objects in a specific order, and its successful execution requires the optimization of the perceptual resources of foveal and extrafoveal vision. The main objective of this work is to detect if some patterns can be found within the data, to discern among people with chronic pain, extrapyramidal patients and healthy controls. We employed statistical tests to evaluate differences among groups, considering three novel indicators: blinking rate, average blinking duration and maximum pupil size variation. Additionally, to divide the three patient groups based on scan-path images—which appear very noisy and all similar to each other—we applied deep learning techniques to embed them into a larger transformed space. We then applied a clustering approach to correctly detect and classify the three cohorts. Preliminary experiments show promising results.
eye tracking; Trail Making Test; visual sequential search test; neurological diseases; deep learning
Settore INFO-01/A - Informatica
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
2021
https://www.mdpi.com/2227-7390/9/24/3159
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1187148
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