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2020-02-17
Alsumayt, Albandari, Albawardy, Norah, Aldossary, Wejdan, Alghamdi, Ebtehal, Aljammaz, Aljawhra.  2019.  Improve the security over the wireless sensor networks in medical sector. 2019 2nd International Conference on Computer Applications Information Security (ICCAIS). :1–4.
Nowadays with the huge technological development, the reliance on technology has become enormous. Wireless Sensor Networks (WSN) is an example of using the Internet and communication between the patient and the hospital. Easy use of such networks helps to increase the quality of communication between patient and hospital. With the development of technology increased risk in use. Any change in this data between the patient and the hospital may cause false data that may harm the patient. In this paper, a secure protocol is designed to ensure the confidentiality, integrity, and availability of data transfer between the hospital and the patient, depending on the AES and RC4 algorithms.
2018-11-19
Ali, S., Khan, M. A., Ahmad, J., Malik, A. W., ur Rehman, A..  2018.  Detection and Prevention of Black Hole Attacks in IOT Amp;Amp; WSN. 2018 Third International Conference on Fog and Mobile Edge Computing (FMEC). :217–226.

Wireless Sensor Network is the combination of small devices called sensor nodes, gateways and software. These nodes use wireless medium for transmission and are capable to sense and transmit the data to other nodes. Generally, WSN composed of two types of nodes i.e. generic nodes and gateway nodes. Generic nodes having the ability to sense while gateway nodes are used to route that information. IoT now extended to IoET (internet of Everything) to cover all electronics exist around, like a body sensor networks, VANET's, smart grid stations, smartphone, PDA's, autonomous cars, refrigerators and smart toasters that can communicate and share information using existing network technologies. The sensor nodes in WSN have very limited transmission range as well as limited processing speed, storage capacities and low battery power. Despite a wide range of applications using WSN, its resource constrained nature given birth to a number severe security attacks e.g. Selective Forwarding attack, Jamming-attack, Sinkhole attack, Wormhole attack, Sybil attack, hello Flood attacks, Grey Hole, and the most dangerous BlackHole Attacks. Attackers can easily exploit these vulnerabilities to compromise the WSN network.

2018-05-09
Hamouda, R. Ben, Hafaiedh, I. Ben.  2017.  Formal Modeling and Verification of a Wireless Body Area Network (WBAN) Protocol: S-TDMA Protocol. 2017 International Conference on Internet of Things, Embedded Systems and Communications (IINTEC). :72–77.

WBANs integrate wearable and implanted devices with wireless communication and information processing systems to monitor the well-being of an individual. Various MAC (Medium Access Control) protocols with different objectives have been proposed for WBANs. The fact that any flaw in these critical systems may lead to the loss of one's life implies that testing and verifying MAC's protocols for such systems are on the higher level of importance. In this paper, we firstly propose a high-level formal and scalable model with timing aspects for a MAC protocol particularly designed for WBANs, named S-TDMA (Statistical frame based TDMA protocol). The protocol uses TDMA (Time Division Multiple Access) bus arbitration, which requires temporal aspect modeling. Secondly, we propose a formal validation of several relevant properties such as deadlock freedom, fairness and mutual exclusion of this protocol at a high level of abstraction. The protocol was modeled using a composition of timed automata components, and verification was performed using a real-time model checker.

2018-04-02
Siddiqi, M., All, S. T., Sivaraman, V..  2017.  Secure Lightweight Context-Driven Data Logging for Bodyworn Sensing Devices. 2017 5th International Symposium on Digital Forensic and Security (ISDFS). :1–6.

Rapid advancement in wearable technology has unlocked a tremendous potential of its applications in the medical domain. Among the challenges in making the technology more useful for medical purposes is the lack of confidence in the data thus generated and communicated. Incentives have led to attacks on such systems. We propose a novel lightweight scheme to securely log the data from bodyworn sensing devices by utilizing neighboring devices as witnesses who store the fingerprints of data in Bloom filters to be later used for forensics. Medical data from each sensor is stored at various locations of the system in chronological epoch-level blocks chained together, similar to the blockchain. Besides secure logging, the scheme offers to secure other contextual information such as localization and timestamping. We prove the effectiveness of the scheme through experimental results. We define performance parameters of our scheme and quantify their cost benefit trade-offs through simulation.

Odesile, A., Thamilarasu, G..  2017.  Distributed Intrusion Detection Using Mobile Agents in Wireless Body Area Networks. 2017 Seventh International Conference on Emerging Security Technologies (EST). :144–149.

Technological advances in wearable and implanted medical devices are enabling wireless body area networks to alter the current landscape of medical and healthcare applications. These systems have the potential to significantly improve real time patient monitoring, provide accurate diagnosis and deliver faster treatment. In spite of their growth, securing the sensitive medical and patient data relayed in these networks to protect patients' privacy and safety still remains an open challenge. The resource constraints of wireless medical sensors limit the adoption of traditional security measures in this domain. In this work, we propose a distributed mobile agent based intrusion detection system to secure these networks. Specifically, our autonomous mobile agents use machine learning algorithms to perform local and network level anomaly detection to detect various security attacks targeted on healthcare systems. Simulation results show that our system performs efficiently with high detection accuracy and low energy consumption.

2015-05-06
Malik, O.A., Arosha Senanayake, S.M.N., Zaheer, D..  2015.  An Intelligent Recovery Progress Evaluation System for ACL Reconstructed Subjects Using Integrated 3-D Kinematics and EMG Features. Biomedical and Health Informatics, IEEE Journal of. 19:453-463.

An intelligent recovery evaluation system is presented for objective assessment and performance monitoring of anterior cruciate ligament reconstructed (ACL-R) subjects. The system acquires 3-D kinematics of tibiofemoral joint and electromyography (EMG) data from surrounding muscles during various ambulatory and balance testing activities through wireless body-mounted inertial and EMG sensors, respectively. An integrated feature set is generated based on different features extracted from data collected for each activity. The fuzzy clustering and adaptive neuro-fuzzy inference techniques are applied to these integrated feature sets in order to provide different recovery progress assessment indicators (e.g., current stage of recovery, percentage of recovery progress as compared to healthy group, etc.) for ACL-R subjects. The system was trained and tested on data collected from a group of healthy and ACL-R subjects. For recovery stage identification, the average testing accuracy of the system was found above 95% (95-99%) for ambulatory activities and above 80% (80-84%) for balance testing activities. The overall recovery evaluation performed by the proposed system was found consistent with the assessment made by the physiotherapists using standard subjective/objective scores. The validated system can potentially be used as a decision supporting tool by physiatrists, physiotherapists, and clinicians for quantitative rehabilitation analysis of ACL-R subjects in conjunction with the existing recovery monitoring systems.
 

2015-04-30
Ben Othman, S., Trad, A., Youssef, H..  2014.  Security architecture for at-home medical care using Wireless Sensor Network. Wireless Communications and Mobile Computing Conference (IWCMC), 2014 International. :304-309.

Distributed wireless sensor network technologies have become one of the major research areas in healthcare industries due to rapid maturity in improving the quality of life. Medical Wireless Sensor Network (MWSN) via continuous monitoring of vital health parameters over a long period of time can enable physicians to make more accurate diagnosis and provide better treatment. The MWSNs provide the options for flexibilities and cost saving to patients and healthcare industries. Medical data sensors on patients produce an increasingly large volume of increasingly diverse real-time data. The transmission of this data through hospital wireless networks becomes a crucial problem, because the health information of an individual is highly sensitive. It must be kept private and secure. In this paper, we propose a security model to protect the transfer of medical data in hospitals using MWSNs. We propose Compressed Sensing + Encryption as a strategy to achieve low-energy secure data transmission in sensor networks.