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Depresjon: a motor activity database of depression episodes in unipolar and bipolar patients

Published:12 June 2018Publication History

ABSTRACT

Wearable sensors measuring different parts of people's activity are a common technology nowadays. In research, data collected using these devices also draws attention. Nevertheless, datasets containing sensor data in the field of medicine are rare. Often, data is non-public and only results are published. This makes it hard for other researchers to reproduce and compare results or even collaborate. In this paper we present a unique dataset containing sensor data collected from patients suffering from depression. The dataset contains motor activity recordings of 23 unipolar and bipolar depressed patients and 32 healthy controls. For each patient we provide sensor data over several days of continuous measuring and also some demographic data. The severity of the patients' depressive state was labeled using ratings done by medical experts on the Montgomery-Asberg Depression Rating Scale (MADRS). In this respect, the here presented dataset can be useful to explore and understand the association between depression and motor activity better. By making this dataset available, we invite and enable interested researchers the possibility to tackle this challenging and important societal problem.

References

  1. Lauren B Alloy, Tommy H Ng, Madison K Titone, and Elaine M Boland. 2017. Circadian rhythm dysregulation in bipolar spectrum disorders. Current psychiatry reports 19, 4 (2017), 21.Google ScholarGoogle Scholar
  2. Atiyeh Bayani, Fatemeh Hadaeghi, Sajad Jafari, and Greg Murray. 2017. Critical slowing down as an early warning of transitions in episodes of bipolar disorder: A simulation study based on a computational model of circadian activity rhythms. Chronobiology international (2017).Google ScholarGoogle Scholar
  3. William Bechtel. 2015. Circadian rhythms and mood disorders: are the phenomena and mechanisms causally related? Frontiers in psychiatry 6 (2015), 118.Google ScholarGoogle Scholar
  4. Jan O Berle, Erik R Hauge, Ketil J Oedegaard, Fred Holsten, and Ole B Fasmer. 2010. Actigraphic registration of motor activity reveals a more structured behavioural pattern in schizophrenia than in major depression. BMC research notes 3, 1 (2010), 149.Google ScholarGoogle Scholar
  5. Christopher Burton, Brian McKinstry, Aurora Szentagotai Tătar, Antoni Serrano-Bianco, Claudia Pagliari, and Maria Wolters. 2013. Activity monitoring in patients with depression: a systematic review. Journal of affective disorders 145, 1 (2013).Google ScholarGoogle ScholarCross RefCross Ref
  6. Ole B Fasmer, Hagop S Akiskal, John R Kelsoe, and Ketil J Oedegaard. 2009. Clinical and pathophysiological relations between migraine and mood disorders. Current Psychiatry Reviews 5, 2 (2009), 93--109.Google ScholarGoogle ScholarCross RefCross Ref
  7. Enrique Garcia-Ceja, Venet Osmani, and Oscar Mayora. 2016. Automatic stress detection in working environments from smartphones' accelerometer data: a first step. IEEE journal of biomedical and health informatics 20, 4 (2016), 1053--1060.Google ScholarGoogle Scholar
  8. Vishwesha Guttal and Ciriyam Jayaprakash. 2008. Changing skewness: an early warning signal of regime shifts in ecosystems. Ecology letters 11, 5 (2008), 450--460.Google ScholarGoogle Scholar
  9. CJ Hawley, TM Gale, and T Sivakumaran. 2002. Defining remission by cut off score on the MADRS: selecting the optimal value. Journal of affective disorders 72, 2 (2002), 177--184.Google ScholarGoogle ScholarCross RefCross Ref
  10. RM Hirschfeld. 2014. Differential diagnosis of bipolar disorder and major depressive disorder. Journal of affective disorders 169 (2014), S12--S16.Google ScholarGoogle ScholarCross RefCross Ref
  11. Nathalie Japkowicz and Shaju Stephen. 2002. The class imbalance problem: A systematic study. Intelligent data analysis 6, 5 (2002), 429--449. Google ScholarGoogle ScholarDigital LibraryDigital Library
  12. N Keshan, PV Parimi, and Isabelle Bichindaritz. 2015. Machine learning for stress detection from ECG signals in automobile drivers. In Big Data (Big Data), 2015 IEEE International Conference on. IEEE, 2661--2669. Google ScholarGoogle ScholarDigital LibraryDigital Library
  13. Sotiris Kotsiantis, Dimitris Kanellopoulos, Panayiotis Pintelas, and others. 2006. Handling imbalanced datasets: A review. GESTS International Transactions on Computer Science and Engineering 30, 1 (2006), 25--36.Google ScholarGoogle Scholar
  14. Dominic Landgraf, Michael J McCarthy, and David K Welsh. 2014. The role of the circadian clock in animal models of mood disorders. Behavioral neuroscience 128, 3 (2014), 344.Google ScholarGoogle Scholar
  15. L. B. Leng, L. B. Giin, and W. Y. Chung. 2015. Wearable driver drowsiness detection system based on biomedical and motion sensors. In 2015 IEEE SENSORS. 1--4.Google ScholarGoogle Scholar
  16. Peter M Lewinsohn, Ari Solomon, John R Seeley, and Antonette Zeiss. 2000. Clinical implications of "subthreshold" depressive symptoms. Journal of abnormal psychology 109, 2 (2000), 345.Google ScholarGoogle ScholarCross RefCross Ref
  17. Eva M Marco, Elena Velarde, Ricardo Llorente, and Giovanni Laviola. 2016. Disrupted circadian rhythm as a common player in developmental models of neuropsychiatric disorders. In Neurotoxin Modeling of Brain Disorders --- Life-long Outcomes in Behavioral Teratology. Springer, 155--181.Google ScholarGoogle Scholar
  18. Stuart A Montgomery and MARIE Asberg. 1979. A new depression scale designed to be sensitive to change. The British journal of psychiatry 134, 4 (1979), 382--389.Google ScholarGoogle Scholar
  19. Oscar Martinez Mozos, Virginia Sandulescu, Sally Andrews, David Ellis, Nicola Bellotto, Radu Dobrescu, and Jose Manuel Ferrandez. 2017. Stress detection using wearable physiological and sociometric sensors. International Journal of Neural Systems 27, 02 (2017), 1650041.Google ScholarGoogle ScholarCross RefCross Ref
  20. Matthias J Müller, Hubertus Himmerich, Barbara Kienzle, and Armin Szegedi. 2003. Differentiating moderate and severe depression using the Montgomery-Åsberg depression rating scale (MADRS). Journal of affective disorders (2003).Google ScholarGoogle Scholar
  21. NICE. 2009. National Institute for Health and Clinical Excellence. Depression in adults: recognition and management. NICE guideline CG90. https://www.nice.org.uk/guidance/cg90. (2009). {last visited, February 14, 2018}.Google ScholarGoogle Scholar
  22. The National Institute of Mental Health IRC. 2018. Definitions of the RDoC Domains and Constructs. (2018). https://www.nimh.nih.gov/research-priorities/rdoc/definitions-of-the-rdoc-domains-and-constructs.shtmlGoogle ScholarGoogle Scholar
  23. Mark Olfson, Benjamin G Druss, and Steven C Marcus. 2015. Trends in mental health care among children and adolescents. New England Journal of Medicine 372, 21 (2015), 2029--2038.Google ScholarGoogle ScholarCross RefCross Ref
  24. Frank J Penedo and Jason R Dahn. 2005. Exercise and well-being: a review of mental and physical health benefits associated with physical activity. Current opinion in psychiatry 18, 2 (2005), 189--193.Google ScholarGoogle Scholar
  25. Stephen Pilling, Ian Anderson, David Goldberg, Nicholas Meader, Clare Taylor, Two Guideline Development Groups, and others. 2009. Depression in adults, including those with a chronic physical health problem: summary of NICE guidance. BMJ 339, 10.1136 (2009).Google ScholarGoogle ScholarCross RefCross Ref
  26. Guilherme V Polanczyk, Giovanni A Salum, Luisa S Sugaya, Arthur Caye, and Luis A Rohde. 2015. Annual Research Review: A meta-analysis of the worldwide prevalence of mental disorders in children and adolescents. Journal of Child Psychology and Psychiatry 56, 3 (2015), 345--365.Google ScholarGoogle ScholarCross RefCross Ref
  27. Nadja Razavi, Helge Horn, Philipp Koschorke, Simone Hügli, Oliver Höfle, Thomas Müller, Werner Strik, and Sebastian Walther. 2011. Measuring motor activity in major depression: the association between the Hamilton Depression Rating Scale and actigraphy. Psychiatry research 190, 2 (2011), 212--216.Google ScholarGoogle Scholar
  28. Marten Scheffer, Jordi Bascompte, William A Brock, Victor Brovkin, Stephen R Carpenter, Vasilis Dakos, Hermann Held, Egbert H Van Nes, Max Rietkerk, and George Sugihara. 2009. Early-warning signals for critical transitions. Nature 461, 7260 (2009), 53.Google ScholarGoogle Scholar
  29. Jan Scott, Greg Murray, Chantal Henry, Gunnar Morken, Elizabeth Scott, Jules Angst, Kathleen R Merikangas, and Ian B Hickie. 2017. Activation in bipolar disorders: a systematic review. JAMA psychiatry 74, 2 (2017), 189--196.Google ScholarGoogle Scholar
  30. Jean M Twenge. 2015. Time period and birth cohort differences in depressive symptoms in the US, 1982--2013. Social Indicators Research 121, 2 (2015), 437--454.Google ScholarGoogle ScholarCross RefCross Ref
  31. Gaetano Valenza, Mimma Nardelli, Antonio Lanata, Claudio Gentiii, Gilles Bertschy, Rita Paradiso, and Enzo Pasquale Scilingo. 2014. Wearable monitoring for mood recognition in bipolar disorder based on history-dependent long-term heart rate variability analysis. IEEE Journal of Biomedical and Health Informatics 18, 5 (2014), 1625--1635.Google ScholarGoogle ScholarCross RefCross Ref
  32. Marianne Agergaard Vammen, Sigurd Mikkelsen, Åse Marie Hansen, Jens Peter Bonde, Matias B Grynderup, Henrik Kolstad, Linda Kærlev, Ole Mors, Reiner Rugulies, and Jane Frlund Thomsen. 2016. Emotional demands at work and the risk of clinical depression: A longitudinal study in the Danish public sector. Journal of occupational and environmental medicine 58, 10 (2016), 994--1001.Google ScholarGoogle ScholarCross RefCross Ref
  33. Nicola Vanello, Andrea Guidi, Claudio Gentili, Sandra Werner, Gilles Bertschy, Gaetano Valenza, Antonio Lanata, and Enzo Pasquale Scilingo. 2012. Speech analysis for mood state characterization in bipolar patients. In Engineering in Medicine and Biology Society (EMBC), 2012 Annual International Conference of the IEEE. IEEE, 2104--2107.Google ScholarGoogle ScholarCross RefCross Ref

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        • Published in

          cover image ACM Conferences
          MMSys '18: Proceedings of the 9th ACM Multimedia Systems Conference
          June 2018
          604 pages
          ISBN:9781450351928
          DOI:10.1145/3204949
          • General Chair:
          • Pablo Cesar,
          • Program Chairs:
          • Michael Zink,
          • Niall Murray

          Copyright © 2018 Owner/Author

          This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike International 4.0 License.

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          Association for Computing Machinery

          New York, NY, United States

          Publication History

          • Published: 12 June 2018

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