Sensor Networks and Personal Health Data Management: Software Engineering Challenges

The advances of 5G, sensors, and information technologies enabled proliferation of smart pervasive sensor networks. 5G mobile networks provide low-power, high-availability, high density, and high-throughput data capturing by sensor networks and continuous streaming of multiple measured variables. Rapid progress in sensors that can measure vital signs, advances in the management of medical knowledge, and improvement of algorithms for decision support, are fueling a technological disruption to health monitoring. The increase in size and complexity of wireless sensor networks and expansion into multiple areas of health monitoring creates challenges for system design and software engineering practices. In this paper, we highlight some of the key software engineering and data-processing issues, along with addressing emerging ethical issues of data management. The challenges associated with ensuring high dependability of sensor network systems can be addressed by metamorphic testing. The proposed conceptual solution combines data streaming, filtering, cross-calibration, use of medical knowledge for system operation and data interpretation, and IoT-based calibration using certified linked diagnostic devices. Integration of blockchain technologies and artificial intelligence offers a solution to the increasing needs for higher accuracy of measurements of vital signs, high-quality decision-making, and dependability, including key medical and ethical requirements of safety and security of the data.

[1]  Huai Liu,et al.  An innovative approach for testing bioinformatics programs using metamorphic testing , 2009, BMC Bioinformatics.

[2]  Ian F. Akyildiz Nanonetworks: A new frontier in communications , 2010, 2010 International Conference on e-Business (ICE-B).

[3]  ABBAS JAMALIPOUR,et al.  Network selection in an integrated wireless LAN and UMTS environment using mathematical modeling and computing techniques , 2005, IEEE Wireless Communications.

[4]  John P. Glaser,et al.  Comprar Health Care Information Systems: A Practical Approach for Health Care Management | H. K. Huang | 9780470387801 | Wiley , 2009 .

[5]  Sergio Segura,et al.  A Survey on Metamorphic Testing , 2016, IEEE Transactions on Software Engineering.

[6]  GaniAbdullah,et al.  The rise of "big data" on cloud computing , 2015 .

[7]  I. Division Medical ethics today : the BMA's handbook of ethics and law , 2008 .

[8]  Ali Idri,et al.  Mobile personal health records for pregnancy monitoring functionalities: Analysis and potential , 2016, Comput. Methods Programs Biomed..

[9]  BushJames,et al.  Impact of a Mobile Health Application on User Engagement and Pregnancy Outcomes Among Wyoming Medicaid Members , 2017 .

[10]  Linlin Wang,et al.  Gestational Weight Gain Charts by Gestational Age and Body Mass Index for Chinese Women: A Population-Based Follow-up Study , 2019, Journal of epidemiology.

[11]  Vibhor Sharma,et al.  Near Field Communication , 2013, Encyclopedia of Biometrics.

[12]  I. Kohane,et al.  Finding the missing link for big biomedical data. , 2014, JAMA.

[13]  R. Dodge,et al.  The challenge of defining wellbeing , 2012 .

[14]  Alcides Montoya,et al.  Artificial Intelligence for Wireless Sensor Networks Enhancement , 2010 .

[15]  Gregorio López,et al.  A Review on Architectures and Communications Technologies for Wearable Health-Monitoring Systems , 2012, Sensors.

[16]  H. Truby,et al.  Attenuating Pregnancy Weight Gain—What Works and Why: A Systematic Review and Meta-Analysis , 2018, Nutrients.

[17]  BachiriMariam,et al.  Mobile personal health records for pregnancy monitoring functionalities , 2016 .

[18]  Ebru Gökalp,et al.  Analysing Opportunities and Challenges of Integrated Blockchain Technologies in Healthcare , 2018, SIGSAND/PLAIS.

[19]  Miyeon Ha,et al.  Where WTS meets WTB: A Blockchain-based Marketplace for Digital Me to trade users' private data , 2019, Pervasive Mob. Comput..

[20]  Kire Trivodaliev,et al.  A review of Internet of Things for smart home: Challenges and solutions , 2017 .

[21]  N. B. Anuar,et al.  The rise of "big data" on cloud computing: Review and open research issues , 2015, Inf. Syst..

[22]  Algirdas Avizienis,et al.  The N-Version Approach to Fault-Tolerant Software , 1985, IEEE Transactions on Software Engineering.

[23]  Vladimir Brusic,et al.  Sensor Networks and Data Management in Healthcare: Emerging Technologies and New Challenges , 2019, 2019 IEEE 43rd Annual Computer Software and Applications Conference (COMPSAC).

[24]  Brian Randell,et al.  Fundamental Concepts of Dependability , 2000 .

[25]  Z. Obermeyer,et al.  Predicting the Future - Big Data, Machine Learning, and Clinical Medicine. , 2016, The New England journal of medicine.

[26]  K. Kinsella,et al.  Global aging : the challenge of success , 2005 .

[27]  J. Li,et al.  Prevalence and predictors of antenatal depressive symptoms among Chinese women in their third trimester: a cross-sectional survey , 2015, BMC Psychiatry.

[28]  Mohamed Medhat Gaber,et al.  Learning from Data Streams: Processing Techniques in Sensor Networks , 2007 .

[29]  Joel J. P. C. Rodrigues,et al.  Real-time data management on wireless sensor networks: A survey , 2012, J. Netw. Comput. Appl..

[30]  Junyi Li,et al.  Network densification: the dominant theme for wireless evolution into 5G , 2014, IEEE Communications Magazine.

[31]  Ian F. Akyildiz,et al.  Nanonetworks: A new frontier in communications , 2012, 2010 International Conference on Security and Cryptography (SECRYPT).

[32]  Andrew McRae,et al.  Limitations of pulmonary embolism ICD-10 codes in emergency department administrative data: let the buyer beware , 2017, BMC Medical Research Methodology.

[33]  J. Frankovich,et al.  Evidence-based medicine in the EMR era. , 2011, The New England journal of medicine.

[34]  Ian Wilson,et al.  The new rules , 2000 .

[35]  Albert Y. Zomaya,et al.  Remote sensing big data computing: Challenges and opportunities , 2015, Future Gener. Comput. Syst..

[36]  K. Volpp,et al.  Accuracy of smartphone applications and wearable devices for tracking physical activity data. , 2015, JAMA.

[37]  Bernhard Walke,et al.  IEEE 802.11 Wireless Local Area Networks , 2006 .

[38]  Camille Rosenthal-Sabroux,et al.  Smart and Digital City : A Systematic Literature Review , 2014 .

[39]  Murray E. Jennex,et al.  A Revised Knowledge Pyramid , 2013, Int. J. Knowl. Manag..

[40]  Soyini D. Liburd,et al.  An N-version electronic voting system , 2004 .

[41]  J. Echols,et al.  Impact of a Mobile Health Application on User Engagement and Pregnancy Outcomes Among Wyoming Medicaid Members , 2017, Telemedicine journal and e-health : the official journal of the American Telemedicine Association.

[42]  Victor M Montori,et al.  The optimal practice of evidence-based medicine: incorporating patient preferences in practice guidelines. , 2013, JAMA.

[43]  WangLizhe,et al.  Remote sensing big data computing , 2015 .

[44]  Daniel E. O'Leary,et al.  Artificial Intelligence and Big Data , 2013, IEEE Intelligent Systems.

[45]  Rajkumar Buyya,et al.  Article in Press Future Generation Computer Systems ( ) – Future Generation Computer Systems Cloud Computing and Emerging It Platforms: Vision, Hype, and Reality for Delivering Computing as the 5th Utility , 2022 .

[46]  L. Mølsted‐Pedersen,et al.  Perinatal complications in women with gestational diabetes mellitus. , 2002, Acta obstetricia et gynecologica Scandinavica.

[47]  Mark Harman,et al.  The Oracle Problem in Software Testing: A Survey , 2015, IEEE Transactions on Software Engineering.

[48]  L. Mølsted‐Pedersen,et al.  Perinatal complications in women with gestational diabetes mellitus , 2001 .

[49]  Anna Bernasconi,et al.  Introduction to Storage Area Networks , 2003 .

[50]  M. Ausems,et al.  Weight gain in healthy pregnant women in relation to pre-pregnancy BMI, diet and physical activity. , 2015, Midwifery.

[51]  Giordano Lanzola,et al.  Antepartum Fetal Monitoring through a Wearable System and a Mobile Application , 2018 .

[52]  D. Lawlor,et al.  Gestational weight gain charts for different body mass index groups for women in Europe, North America, and Oceania , 2018, BMC Medicine.

[53]  Sasikanth Avancha,et al.  A privacy framework for mobile health and home-care systems , 2009, SPIMACS '09.

[54]  Huai Liu,et al.  How Effectively Does Metamorphic Testing Alleviate the Oracle Problem? , 2014, IEEE Transactions on Software Engineering.

[55]  Manfred Broy,et al.  Professional and Ethical Dilemmas in Software Engineering , 2009, Computer.

[56]  Filipe Portela,et al.  Interoperability in Healthcare , 2017 .

[57]  Angus K. Y. Wong The Near-Me Area Network , 2010, IEEE Internet Computing.

[58]  C Cobelli,et al.  Parental evaluation of a telemonitoring service for children with Type 1 Diabetes , 2017, Journal of telemedicine and telecare.

[59]  Kevin Hung,et al.  Ubiquitous Health Monitoring: Integration of Wearable Sensors, Novel Sensing Techniques, and Body Sensor Networks , 2015 .

[60]  Mihaela Cardei,et al.  Sensor Networks in Healthcare , 2011 .

[61]  Marimuthu Palaniswami,et al.  Internet of Things (IoT): A vision, architectural elements, and future directions , 2012, Future Gener. Comput. Syst..

[62]  Jessilyn Dunn,et al.  Wearables and the medical revolution. , 2018, Personalized medicine.

[63]  E. Chiauzzi,et al.  Patient-centered activity monitoring in the self-management of chronic health conditions , 2015, BMC Medicine.

[64]  J. Glaser,et al.  Health Care Information Systems: A Practical Approach for Health Care Management , 2009 .

[65]  Enrico Schiattarella Introduction to Storage Area Networks , 2002 .

[66]  John F. Hurdle,et al.  Measuring diagnoses: ICD code accuracy. , 2005, Health services research.

[67]  D. Rehkopf,et al.  Racial/Ethnic Disparities in Inadequate Gestational Weight Gain Differ by Pre-pregnancy Weight , 2015, Maternal and Child Health Journal.

[68]  Mahadev Satyanarayanan From the Editor in Chief: The Many Faces of Adaptation , 2004, IEEE Pervasive Comput..

[69]  I. Megson,et al.  The 2011 Survey on Hypertensive Disorders of Pregnancy (HDP) in China: Prevalence, Risk Factors, Complications, Pregnancy and Perinatal Outcomes , 2014, PloS one.

[70]  Shaojie Tang,et al.  Unlocking the Value of Privacy: Trading Aggregate Statistics over Private Correlated Data , 2018, KDD.

[71]  Chee-Yee Chong,et al.  Sensor networks: evolution, opportunities, and challenges , 2003, Proc. IEEE.

[72]  Bma Comprar Medical Ethics Today. The Bma's Handbook Of Ethics And The Law | BMA | 9781444337082 | Wiley , 2012 .

[73]  Vladimir Brusic,et al.  Big Data Analytics in Immunology: A Knowledge-Based Approach , 2014, BioMed research international.

[74]  John C. Knight,et al.  Safety critical systems: challenges and directions , 2002, Proceedings of the 24th International Conference on Software Engineering. ICSE 2002.

[75]  Xilin Yang,et al.  Prevalence of Gestational Diabetes Mellitus and Its Risk Factors in Chinese Pregnant Women: A Prospective Population-Based Study in Tianjin, China , 2015, PloS one.

[76]  James N. Gilmore,et al.  Everywear: The quantified self and wearable fitness technologies , 2016, New Media Soc..