2021
DOI: 10.1109/tnsre.2021.3051093
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Deep Learning for Accelerometric Data Assessment and Ataxic Gait Monitoring

Abstract: Ataxic gait monitoring and assessment of neurological disorders belong to important multidisciplinary areas that are supported by digital signal processing methods and machine learning tools. This paper presents the possibility of using accelerometric data to optimise deep learning convolutional neural network systems to distinguish between ataxic and normal gait. The experimental dataset includes 860 signal segments of 16 ataxic patients and 19 individuals from the control set with the mean age of 38.6 and 39… Show more

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Cited by 28 publications
(23 citation statements)
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“…All of the datasets were acquired during 26 cycling experiments in a hilly area on a route that is 12 km long, with an altitude difference of 300 m. Records were subsequently stored to the Garmin Connect website, exported as TCX files, converted to CSV files, and then imported to the MATLAB software for further processing. Accelerometric data were recorded by the mobile phone in the spine position, which was selected following previous studies [25], [41], which described the higher discriminative abilities of sensors located in the upper half of the body [42], [43] in comparison to other positions. The sampling frequency of the Android mobile phone sensor was 100 Hz during all cycling routes.…”
Section: A Data Acquisitionmentioning
confidence: 99%
See 1 more Smart Citation
“…All of the datasets were acquired during 26 cycling experiments in a hilly area on a route that is 12 km long, with an altitude difference of 300 m. Records were subsequently stored to the Garmin Connect website, exported as TCX files, converted to CSV files, and then imported to the MATLAB software for further processing. Accelerometric data were recorded by the mobile phone in the spine position, which was selected following previous studies [25], [41], which described the higher discriminative abilities of sensors located in the upper half of the body [42], [43] in comparison to other positions. The sampling frequency of the Android mobile phone sensor was 100 Hz during all cycling routes.…”
Section: A Data Acquisitionmentioning
confidence: 99%
“…Separate accelerometers or their synchronized systems are used in many different applications, which employ standard or deep learning methods for classification of motion patterns. For example, these methods are used in the diagnosis of motion disorders in neurology and ataxic gait monitoring [25], [26]. Analysis of the sensor placement for the best separation ability is one of the fundamental problems of these studies.…”
Section: Introductionmentioning
confidence: 99%
“…The classification results obtained after the selected number of training epochs were then analyzed by the receiver operating characteristic (ROC) [29,30]. The learning process evaluated the number of true/false negatives (TN, FN) and true/false positives (TP, FP) both in the negative set (class A: healthy tissue) and positive set (class B: caries).…”
Section: (A) (B)mentioning
confidence: 99%
“…In the context of movement-related diseases, ML/DL techniques have been used, together with data provided by wearable or vision-based sensors, to support gait assessment with the aim of diagnosis and/or evaluation of disease progression [10,11,[45][46][47][48][49][50][51][52][53][54][55][56][57]. The main focus of most contributions is the detection of abnormal gait based on information extracted from gait data obtained with accelerometers, gyroscopes and/or pressure sensors [45,46,56,57], or with RGB-D cameras [10,[47][48][49][50][51][52][53][54][55].…”
Section: Related Workmentioning
confidence: 99%