Healthcare Technology Letters
Volume 5, Issue 6, December 2018
Volumes & issues:
Volume 5, Issue 6
December 2018
Discriminant feature level fusion based learning for automatic staging of EEG signals
- Author(s): Anil Hazarika ; Arup Sarmah ; Rupam Borah ; Meenakshi Boro ; Lachit Dutta ; Pankaj Kalita ; Balendra kumar dev Choudhury
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 226 –230
- DOI: 10.1049/htl.2018.5024
- Type: Article
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Wide-scale information embedding is a prerequisite to enhance the performance as well as the reliability of decision-making algorithms for viable implementation. Feature fusion technology significantly helps to incorporate such information to provide promising algorithm performance. In this Letter, a fusion-based model with the aid of discriminant correlation analysis to classify electroencephalogram signals is proposed. Sets of multiple feature matrices are generated from signals in both time and wavelet domains for study-specific classes, which are further decomposed to derive a set of sub-multi-view features followed by optimisation to extract statistical features. Features are concatenated using feature fusion technique to derive low order discriminant features. Besides, the analysis of variance was also performed to validate the analysis. The statistically significant features are evaluated for the effective model performance. Experimental results manifest that the proposed feature fusion based algorithm is superior to many state-of-the-art methods and thus promote real-time implementation.
Developed wearable miniature sensor to diagnose initial perturbations of cardiorespiratory system
- Author(s): Reza Abbasi-Kesbi ; Alireza Nikfarjam ; Ardalan Akhavan Hezaveh
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 231 –235
- DOI: 10.1049/htl.2018.5027
- Type: Article
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The progress of microelectromechanical systems tends to fabricate miniature motion sensors that can be used for various purposes of biomedical systems, particularly on-body applications. A miniature wireless sensor is developed that not only monitors heartbeat and respiration rate based on chest movements but also identifies initial problems in the cardiorespiratory system, presenting a healthy measure defined based on height and length of the normal distribution of respiration rate and heartbeat. The obtained results of various tests are compared with two commercial sensors consisting of electrocardiogram sensor as well as belt sensor of respiration rate as a reference (gold standard), showing that the root-mean-square errors obtain <2.27 beats/min for a heartbeat and 0.93 breaths/min for respiration rate. In addition, the standard deviation of the errors reaches <1.26 and 0.63 for heartbeat and respiration rates, separately. According to the outcome results, the sensor can be considered an appropriate candidate for in-home health monitoring, particularly early detection of cardiovascular system problems.
Changes in lower limb muscle synchronisation during walking on high-heeled shoes
- Author(s): Manisha Pratihast ; Ahmed Al-Ani ; Rifai Chai ; Steven Su ; Ganesh Naik
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 236 –238
- DOI: 10.1049/htl.2018.5032
- Type: Article
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The goal of this research was to investigate the effect of wearing high-heeled shoes (HHS) on lower limb muscle synchronisation during walking, using beta band (15–30 Hz) coherence analysis. Fifteen females with no previous neuromuscular disorders volunteered in this study. Surface electromyography in frequency domain was studied from rectus femoris (RF), vastus lateralis (VL), vastus medialis (VM) and semitendinosus (ST) muscles during walking by subjects wearing HHS of three different heel heights (low – 4 cm, medium – 6 cm and high – 10 cm). Average coherence values were calculated for RF-VL, RF-VM and RF-ST muscles in beta band to analyse muscle pair synchronisation. In this study, significant increase in beta band coherence was found in all three muscle pairs during walking on HHS of different heel heights (p<0.05). Increased beta band coherence obtained from this study suggested that walking on HHS demands higher muscle pair synchronisation, to maintain stability around the knee joint.
Sensor-based wearable system for the detection and automatic treatment of nocturnal hypoglycaemia
- Author(s): Somia Sahraoui ; Sofiane Sahraoui ; Oussama Benbousa ; Ahmed-Sami Berkani ; Azeddine Bilami
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 239 –241
- DOI: 10.1049/htl.2018.5053
- Type: Article
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Diabetic patients are prone to daily and severe health-related risks, namely hyper and hypoglycaemia. Hypoglycaemia phenomenon happens when the glucose level in patient's blood is lower than a well-determined sill. It may induce serious impacts, such as functional brain failure or even the death. Hypoglycaemia is especially dangerous when it occurs during the night while the patient is asleep because it becomes difficult to be detected by the patient itself or other persons around him. While all existing sensor-based solutions are detection-only driven, the proposed solution goes beyond and attempts to treat autonomously, and at low cost, the nocturnal hypoglycaemia. The presented system detects the nocturnal hypoglycaemia phenomenon based on accelerated heart-rate symptom and a progressive detection algorithm. The system treats then the detected nocturnal hypoglycaemia throughout safe and automatic injection of glucagon.
Time-frequency BSS of biosignals
- Author(s): Seda Senay
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 242 –246
- DOI: 10.1049/htl.2018.5029
- Type: Article
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Time–frequency (TF) representations are very important tools to understand and explain circumstances, where the frequency content of non-stationary signals varies in time. A variety of biosignals such as speech, electrocardiogram (ECG), electroencephalogram (EEG), and electromyogram (EMG) show some form of non-stationarity. Considering Priestley's evolutionary (time-dependent) spectral theory for analysis of non-stationary signals, the authors defined a TF representation called evolutionary Slepian transform (EST). The evolutionary spectral theory generalises the definition of spectra while avoiding some of the shortcomings of bilinear TF methods. The performance of the EST in the representation of biosignals for the blind source separation (BSS) problem to extract information from a mixture of sources is studied. For example, in the case of EEG recordings, as electrodes are placed along the scalp, what is actually observed from EEG data at each electrode is a mixture of all the active sources. Separation of these sources from a mixture of observations is crucial for the analysis of recordings. In this study, they show that the EST can be used efficiently in the TF-based BSS problem of biosignals.
Analysis of the biomechanical characteristics of the knee joint with a meniscus injury
- Author(s): Tiguai Zhou
- Source: Healthcare Technology Letters, Volume 5, Issue 6, p. 247 –249
- DOI: 10.1049/htl.2018.5048
- Type: Article
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The knee joint is one of the most important joints in the human body. The meniscus is a half-moon cartilage which locates between the medial and lateral condyle of the thighbone and the medial and lateral condyle of the shin in the knee joint, and it has multiple functions such as bearing load, cushioning and stabilising joints. It is easy to be injured because of its complex structure and functions. In this study, the physical fitness of patients with meniscus injury was tested using kinematic measurement, and the data were collected for biomechanical analysis on the parameters such as the angle and stress when the patient's bent knees during sports. The results demonstrated that the average values of bending angle, the rotation angle of the knee joint and intensity of pressure of the patients with meniscus injury were remarkably different with those of people without meniscus injury. Biomechanical characteristics are of extensive values to the treatment of meniscus injury.
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