PL EN


Preferencje help
Widoczny [Schowaj] Abstrakt
Liczba wyników
Tytuł artykułu

Bayesian network aided grasp and grip efficiency estimation using a smart data glove for post-stroke diagnosis

Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Stroke is one of the major causes behind the increased mortality rate throughout the world and disability among the survivors. Such disabilities include several grasp and grip related impairment in daily activities like holding a glass of water, counting currency notes, producing correct signature in bank, etc., that seek serious attention. Present therapeutic facilities, being expensive and time-consuming, fail to cater the poverty stricken rural class of the society. In this paper, on the basis of an investigation, we developed a smart data glove based diagnostic device for better treatment of such patients by providing timely estimation of their grasp quality. Data collected from a VMG30 motion capture glove for six patients who survived stroke and two other healthy subjects was fused with suitable hypothesis obtained from a domain expert to reflect the required outcome on a Bayesian network. The end result could be made available to a doctor at a remote location through a smart phone for further advice or treatment. Results obtained clearly distinguished a patient from a healthy subject along with supporting estimates to study and compare different grasping gestures. The improvement in mobility could be assessed after physiotherapeutic treatments using the proposed method.
Twórcy
autor
  • Embedded Systems Laboratory, CSIR-Central Mechanical Engineering Research Institute, Durgapur 713209, West Bengal, India; Academy of Scientific and Innovative Research, India
autor
  • Nivedita Health Centre, Durgapur, West Bengal, India
autor
  • Embedded Systems Laboratory, CSIR-Central Mechanical Engineering Research Institute, Durgapur 713209, West Bengal, India
  • Embedded Systems Laboratory, CSIR-Central Mechanical Engineering Research Institute, Durgapur 713209, West Bengal, India; Academy of Scientific and Innovative Research, India
autor
  • Academy of Scientific and Innovative Research, India
Bibliografia
  • [1] Kataevaet NG, Kataev MY, Chistyakova VA, Khamaganov YA. Automated estimation of severity of walking disorders in patients after stroke. Biomed Eng 2012;46. 36-36.
  • [2] Sacco RL, Kasner SE, Broderick JP, Caplan LR, Connors JJ, Culebras A, et al. An updated definition of stroke for the 21st century. Stroke 2013;44:2064–89.
  • [3] Pelagie M. Beeson: Putting Words on Paper: Writing After Stroke. University of Arizona: Stroke Connection; 2005. p. 24–5.
  • [4] Iqbal J, Khan H, Tsagarakis NG, Caldwell DG. A novel exoskeleton robotic system for hand rehabilitation- conceptualization to prototyping. Biocybernat Biomed Eng 2014;34:79–89.
  • [5] Viteckova S, Kutilek P, Jirina M. Wearable lower limb robotics: a review. Biocybernat Biomed Eng 2013;33:96–105.
  • [6] Spice B. The future of health care is in its data. Webpage of Carnegie Mellon University; 2015.
  • [7] Ghali B, Anantha NT, Chan J, Chau T. Variability of Grip Kinetics during adult signature writing. PLOS ONE 2013;8(5): e63216.
  • [8] Beatriz Leon, Basteris A, Infarinato F, Sale P, Nijenhuis S, Prange G, et al. Grasps Recognition and Evaluation of Stroke Patients for Supporting Rehabilitation Therapy. Hindawi: BioMed Research International; 2014, article id. 318016.
  • [9] Chan M, Estève D, Fourniols JY, Escriba C, Campo E. Smart wearable systems: current status and future challenges. Artif Intell Med 2012;56(3):137–56.
  • [10] Kumar P, Verma J, Prasad S. Hand data Glove: A new generation real-time mouse for human-computer interaction. Recent Adv Inform Technol 2012. 978-1-4577- 0697.
  • [11] Fahn CS, Sun H. Development of a sensory data glove using neural-network-based calibration. Corrections of IC-AT 2000 proceedings; 2000.
  • [12] Lee S-M, Abbott A. Bayesian networks for knowledge discovery in large datasets: basics for nurse researchers. J Biomed Inform 2003;36:389–99.
  • [13] Aoki S, Shiba M, Majima Y, Maekawa Y. Nurse call data analysis using Bayesian network modeling. Proc. Aware Computing (ISAC). 2010. pp. 272–7.
  • [14] Flores MJ, Nicholson AE, Brunskill A, Korb KB, Mascaro S. Incorporating expert knowledge when learning Bayesian network structure: A medical case study. Artif Intell Med 2011;53:181–204.
  • [15] Fenton N, Neil M. Comparing risks of alternative medical diagnosis using Bayesian arguments. J Biomed Inform 2010;43:485–95.
  • [16] Chattopadhyay S, Davis RM, Menezes DD, Singh G, Acharya RU, Tamura T. Application of Bayesian classifier for the diagnosis of dental pain. J Med Syst 2012;36:1425–39.
  • [17] Fuente DL, Bengoetxea E, Navarro F, Bobes J, Alarcón RD. Interconnection between biological abnormalities in borderline personality disorder: use of the Bayesian networks model. Psychiatry Res 2011;186:315–9.
  • [18] Sun Y, Tang Y, Ding S, Lv S, Cui Y. Diagnose the mild cognitive impairment by constructing Bayesian network with missing data. Expert Syst Appl 2011;38:442–9.
  • [19] Kevin Murphy. A Brief Introduction to Graphical Model & Bayesian Networks; 1998.
  • [20] Michal Horny: Bayesian Networks: Technical Report No. 5. (2014).
  • [21] Perelle IB, Ehrman L. An international study of human handedness. The data: Behavioral Genetics 1994;24:217–27.
  • [22] Raymond M, Pontier D. Is there geographical variation in human handedness? Laterality 2004;9:35–51.
  • [23] Schomaker LRB, Plamondon R. The relation between pen force and pen point kinematics in handwriting. Biol Cybernat 1990;63:277–89.
  • [24] Wacharamanotham C, Hurtmanns J, Mertens A, Kronenbuerger M, Schlick C, Borchers J. Evaluating Swabbing: a Touchscreen Input Method for Elderly Users with Tremor. Proceedings of the SIGCHI conference on human factors in computing systems; 2011. p. 623–6.
  • [25] Noritsugu T, Yamamoto H, Sasaki D, Takaiwa M. Wearable power assist device for hand grasping using pneumatic artificial rubber muscle. Proceedings of SICE Annual Conference in Sapporo; 2004. p. 420–5.
Uwagi
PL
Opracowanie ze środków MNiSW w ramach umowy 812/P-DUN/2016 na działalność upowszechniającą naukę (zadania 2017).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-f4467808-94be-41c5-ade9-d09b78d1f568
JavaScript jest wyłączony w Twojej przeglądarce internetowej. Włącz go, a następnie odśwież stronę, aby móc w pełni z niej korzystać.