Scientific Reports (Aug 2024)

A data-driven approach to detect upper limb functional use during daily life in breast cancer survivors using wrist-worn sensors

  • Jill Emmerzaal,
  • Benjamin Filtjens,
  • Nieke Vets,
  • Bart Vanrumste,
  • Ann Smeets,
  • An De Groef,
  • Liesbet De Baets

DOI
https://doi.org/10.1038/s41598-024-67497-6
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract To gain insights into the impact of upper limb (UL) dysfunctions after breast cancer treatment, this study aimed to develop a temporal convolutional neural network (TCN) to detect functional daily UL use in breast cancer survivors using data from a wrist-worn accelerometer. A pre-existing dataset of 10 breast cancer survivors was used that contained raw 3-axis acceleration data and simultaneously recorded video data, captured during four daily life activities. The input of our TCN consists of a 3-axis acceleration sequence with a receptive field of 243 samples. The 4 ResNet TCN blocks perform dilated temporal convolutions with a kernel of size 3 and a dilation rate that increases by a factor of 3 after each iteration. Outcomes of interest were functional UL use (minutes) and percentage UL use. We found strong agreement between the video and predicted data for functional UL use (ICC = 0.975) and moderately strong agreement for %UL use (ICC = 0.794). The TCN model overestimated the functional UL use by 0.71 min and 3.06%. Model performance showed good accuracy, f1, and AUPRC scores (0.875, 0.909, 0.954, respectively). In conclusion, using wrist-worn accelerometer data, the TCN model effectively identified functional UL use in daily life among breast cancer survivors.