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A new approach for automatic removal of movement artifacts in near-infrared spectroscopy time series by means of acceleration data - MaRDI portal

A new approach for automatic removal of movement artifacts in near-infrared spectroscopy time series by means of acceleration data (Q1736734)

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scientific article; zbMATH DE number 7042300
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A new approach for automatic removal of movement artifacts in near-infrared spectroscopy time series by means of acceleration data
scientific article; zbMATH DE number 7042300

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    A new approach for automatic removal of movement artifacts in near-infrared spectroscopy time series by means of acceleration data (English)
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    26 March 2019
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    Summary: Near-infrared spectroscopy (NIRS) enables the non-invasive measurement of changes in hemodynamics and oxygenation in tissue. Changes in light-coupling due to movement of the subject can cause movement artifacts (MAs) in the recorded signals. Several methods have been developed so far that facilitate the detection and reduction of MAs in the data. However, due to fixed parameter values (e.g., global threshold) none of these methods are perfectly suitable for long-term (\textit{i.e}., hours) recordings or were not time-effective when applied to large datasets. We aimed to overcome these limitations by automation, \textit{i.e.}, data adaptive thresholding specifically designed for long-term measurements, and by introducing a stable long-term signal reconstruction. Our new technique (``acceleration-based movement artifact reduction algorithm'', AMARA) is based on combining two methods: the ``movement artifact reduction algorithm'' [\textit{F. Scholkmann} et al., ``How to detect and reduce movement artifacts in near-infrared imaging using moving standard deviation and spline interpolation'', Physiol. Meas. 31, No. 5, 649--662 (2010; \url{doi:10.1088/0967-3334/31/5/004})] and the ``accelerometer-based motion artifact removal'' [\textit{J. Virtanen} et al., ``Accelerometer-based method for correcting signal baseline changes caused by motion artifacts in medical near-infrared spectroscopy'', J. Biomed. Opt. 16, No. 8, Article ID 087005 (2011; \url{doi:10.1117/1.3606576})]. We describe AMARA in detail and report about successful validation of the algorithm using empirical NIRS data, measured over the prefrontal cortex in adolescents during sleep. In addition, we compared the performance of AMARA to that of MARA and ABAMAR based on validation data.
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    movement artifact reduction algorithm (MARA)
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    acceleration-based motion artifact removal (ABAMAR)
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    acceleration-based movement artifact reduction algorithm (AMARA)
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    motion artifacts
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    movement artifacts
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    near-infrared spectroscopy (NIRS)
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    functional-near infrared spectroscopy (fnirs)
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