Papers
Topics
Authors
Recent
2000 character limit reached

TNANet: A Temporal-Noise-Aware Neural Network for Suicidal Ideation Prediction with Noisy Physiological Data (2401.12733v1)

Published 23 Jan 2024 in cs.CY and cs.LG

Abstract: The robust generalization of deep learning models in the presence of inherent noise remains a significant challenge, especially when labels are subjective and noise is indiscernible in natural settings. This problem is particularly pronounced in many practical applications. In this paper, we address a special and important scenario of monitoring suicidal ideation, where time-series data, such as photoplethysmography (PPG), is susceptible to such noise. Current methods predominantly focus on image and text data or address artificially introduced noise, neglecting the complexities of natural noise in time-series analysis. To tackle this, we introduce a novel neural network model tailored for analyzing noisy physiological time-series data, named TNANet, which merges advanced encoding techniques with confidence learning, enhancing prediction accuracy. Another contribution of our work is the collection of a specialized dataset of PPG signals derived from real-world environments for suicidal ideation prediction. Employing this dataset, our TNANet achieves the prediction accuracy of 63.33% in a binary classification task, outperforming state-of-the-art models. Furthermore, comprehensive evaluations were conducted on three other well-known public datasets with artificially introduced noise to rigorously test the TNANet's capabilities. These tests consistently demonstrated TNANet's superior performance by achieving an accuracy improvement of more than 10% compared to baseline methods.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (44)
  1. High frequency heart rate variability: Evidence for a transdiagnostic association with suicide ideation. Biological Psychology, 138:165–171, 2018.
  2. John Allen. Photoplethysmography and its application in clinical physiological measurement. Physiological Measurement, 28(3):R1, 2007.
  3. The uea multivariate time series classification archive, 2018. arXiv preprint arXiv:1811.00075, 2018.
  4. Curriculum learning. In Proceedings of the 26th Annual International Conference on Machine Learning, pages 41–48, 2009.
  5. Exploring the possible mechanisms of blunted cardiac reactivity to acute psychological stress. International Journal of Psychophysiology, 113:1–7, 2017.
  6. College students’ reasons for concealing suicidal ideation. Journal of College Student Psychotherapy, 26(2):83–98, 2012.
  7. Pervasive eeg diagnosis of depression using deep belief network with three-electrodes eeg collector. In 2016 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pages 1239–1246. IEEE, 2016.
  8. Estimating the electrical power output of industrial devices with end-to-end time-series classification in the presence of label noise. In Joint European Conference on Machine Learning and Knowledge Discovery in Databases, pages 469–484. Springer, 2021.
  9. The relationships of current suicidal ideation with inflammatory markers and heart rate variability in unmedicated patients with major depressive disorder. Psychiatry Research, 258:449–456, 2017.
  10. Neurophysiological correlates of suicidal ideation in major depressive disorder: hyperarousal during sleep. Journal of Affective Disorders, 212:160–166, 2017.
  11. A machine learning model for emotion recognition from physiological signals. Biomedical Signal Processing and Control, 55:101646, 2020.
  12. Suicidal ideation while incarcerated: Prevalence and correlates in a large sample of male prisoners in flanders, belgium. International Journal of Law and Psychiatry, 55:19–28, 2017.
  13. Suicides in male prisoners in england and wales, 1978–2003. The Lancet, 366(9493):1301–1302, 2005.
  14. Suicide in prisons: an international study of prevalence and contributory factors. The Lancet Psychiatry, 4(12):946–952, 2017.
  15. Self-concealment and suicidal behaviors. Suicide and Life-Threatening Behavior, 42(3):332–340, 2012.
  16. Robust loss functions under label noise for deep neural networks. In Proceedings of the AAAI Conference on Artificial intelligence, volume 31, 2017.
  17. Co-teaching: Robust training of deep neural networks with extremely noisy labels. Advances in Neural Information Processing Systems, 31, 2018.
  18. Suicidal ideation is associated with altered variability of fingertip photo-plethysmogram signal in depressed patients. Frontiers in Physiology, 8:501, 2017.
  19. Self-paced learning for latent variable models. Proceedings of the 23rd International Conference on Neural Information Processing, 23, 2010.
  20. Investigating facial behavior indicators of suicidal ideation. In 2017 12th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2017), pages 770–777. IEEE, 2017.
  21. EEGNet: a compact convolutional neural network for eeg-based brain–computer interfaces. Journal of Neural Engineering, 15(5):056013, 2016.
  22. Dividemix: Learning with noisy labels as semi-supervised learning. arXiv preprint arXiv:2002.07394, 2020.
  23. Social relationships between prisoners in a maximum security prison: Violence, faith, and the declining nature of trust. Journal of Criminal Justice, 40(5):413–424, 2012.
  24. Alison Liebling. Vulnerability and prison suicide. The British Journal of Criminology, 35(2):173–187, 1995.
  25. Depressive symptoms, anxiety and social stress are associated with diminished cardiovascular reactivity in a psychological treatment-naive population. Journal of Affective Disorders, 330:346–354, 2023.
  26. The use of photoplethysmography in the assessment of mental health: Scoping review. JMIR Mental Health, 10:e40163, 2023.
  27. Ctw: confident time-warping for time-series label-noise learning. In Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence, pages 4046–4054, 2023.
  28. Malene Molding Nielsen. Pains and possibilities in prison: on the use of emotions and positioning in ethnographic research. Acta Sociologica, 53(4):307–321, 2010.
  29. Confident learning: Estimating uncertainty in dataset labels. Journal of Artificial Intelligence Research, 70:1373–1411, 2021.
  30. Prison suicides in germany from 2000 to 2011. International Journal of Law and Psychiatry, 36(5-6):386–389, 2013.
  31. Autonomic function, voice, and mood states. Clinical Autonomic Research, 21:103–110, 2011.
  32. Emotion recognition: Photoplethysmography and electrocardiography in comparison. Biosensors, 12(10):811, 2022.
  33. Is blunted cardiovascular reactivity in depression mood-state dependent? a comparison of major depressive disorder remitted depression and healthy controls. International Journal of Psychophysiology, 90(1):50–57, 2013.
  34. Deep learning with convolutional neural networks for eeg decoding and visualization. Human Brain Mapping, 38(11):5391–5420, 2017.
  35. Portable and real-time iot-based healthcare monitoring system for daily medical applications. IEEE Transactions on Computational Social Systems, 2022.
  36. Paul Smolensky. Information processing in dynamical systems: Foundations of harmony theory. Technical report, Colorado Univ at Boulder Dept of Computer Science, 1986.
  37. Eeg emotion recognition using dynamical graph convolutional neural networks. IEEE Transactions on Affective Computing, 11(3):532–541, 2018.
  38. Resting respiratory sinus arrhythmia in suicide attempters. Psychophysiology, 55(2):e12978, 2018. _eprint: https://onlinelibrary.wiley.com/doi/pdf/10.1111/psyp.12978.
  39. Analysing noisy driver physiology real-time using off-the-shelf sensors: Heart rate analysis software from the taking the fast lane project. Journal of Open Research Software, 7(1):1–9, 2019.
  40. Heartpy: A novel heart rate algorithm for the analysis of noisy signals. Transportation Research Part F: Traffic Psychology and Behaviour, 66:368–378, 2019.
  41. Airplane pilot mental health and suicidal thoughts: a cross-sectional descriptive study via anonymous web-based survey. Environmental Health, 15(1):1–12, 2016.
  42. Generalized cross entropy loss for training deep neural networks with noisy labels. Advances in Neural Information Processing Systems, 31, 2018.
  43. Risk factors for suicide in prisons: a systematic review and meta-analysis. The Lancet Public Health, 6(3):e164–e174, 2021.
  44. Arvanet: Deep recurrent architecture for ppg-based negative mental-state monitoring. IEEE Transactions on Computational Social Systems, 8(1):179–190, 2020.

Summary

We haven't generated a summary for this paper yet.

Whiteboard

Paper to Video (Beta)

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Collections

Sign up for free to add this paper to one or more collections.

Tweets

Sign up for free to view the 1 tweet with 0 likes about this paper.