| Literature DB >> 34880977 |
Sapna Juneja1, Gaurav Dhiman2, Sandeep Kautish3, Wattana Viriyasitavat4, Kusum Yadav5.
Abstract
The Internet of Medical Things (IoMT) has emerged as one of the most important key applications of IoT. IoMT makes the diagnosis and care more convenient and reliable with proven results. The paper presents the technology, open issues, and challenges of IoMT-based systems. It explores the various types of sensors and smart equipment based on IoMT and used for diagnosis and patient care. A comprehensive survey of early detection and postdetection care of the neural disorder dementia is conducted. The paper also presents a postdiagnosis dementia care model named "Demencare." This model incorporates eight sensors capable of tracking the daily routine of dementia patient. The patients can be monitored locally by an edge computing device kept at their premises. The medical experts may also monitor the patients' status for any deviation from normal behavior. IoMT enables better postdiagnosis care for neural disorders, like dementia and Alzheimer's. The patient's behavior and vital parameters are always available despite the remote location of the patients. The data of the patients may be classified, and new insights may be obtained to tackle patients in a better manner.Entities:
Mesh:
Year: 2021 PMID: 34880977 PMCID: PMC8648455 DOI: 10.1155/2021/6712424
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Structure of the Internet of Medical Things (IoMT) based healthcare system.
Various IoT-based applications used in healthcare industry.
| Application | Purpose |
|---|---|
| Clinical process efficiency | Medical facilities are employing connected equipment to improvise the delivery of Medicare. They can monitor diagnosis, offer treatments, and perform automated electronic charting. Doctors are able to sense EMR even remotely. IoT sensors can be exclusively employed for geolocating the patients and medical equipment. IoT has generated pill bottles which can track medicine scheduling [ |
| Ease to health insurance provider organizations | Health insurance company may benefit from IoT devices in numerous ways. These organizations can obtain patient's health data by connecting with various IoT devices used by the patient in order to process the claims. By using IoT, companies can easily find out that which claim is actual and which is not. This leads to a transparency between the company and the customer [ |
| Patient self-/home monitoring | IoT technology should be directly available to consumers for self-assessment and assimilating biometric data, for instance, a smart thermometer that records temperature through temperature sensors of smartphones or some other gadgets. Some smart gadgets can let patients perform EEG at home by themselves. Such gadgets enable tracking and collecting patients' records directly from their homes and also aid towards providing telemedicine services [ |
| Wearable biometric sensors | IoT should be widely employed in connected biometric sensors in clinical and hospital environments, for example, in heart patches used to monitor readings related to the heart and blood pressure reading armlets. These wearable sensors can feed instantaneous patients' information to clinical monitoring devices at remote locations. As a recent development, sensor-based smart-phone-enabled “autorefractor” applications have been developed to evaluate vision [ |
| Fitness wearables | Nowadays, smart fitness tracker and apparels that can record data and monitor and control the fitness state are highly demanded in the market. These devices while being connected to smart phone applications may track and advise some repost regarding fitness [ |
| Neuro- and brain sensing | Research is on the way to make high-tech patient/customer-oriented cranial wearables: IoT smart equipment that can read brainwaves and monitor and send certain mood-elevating neurosignals, which may be crucial in monitoring the mental health of patients. Noninvasive neurotechnology is also explored, which may be used for calibrating the drug efficiency [ |
| Monitoring of newborn (new natal care) | As another dimensional view of this technology, IoT-driven smart and handy wearables can sense and transmit infant's movements, instant temperature, and sleeping patterns to the hand-held devices of their parents, like a smartphone. It enables the parents to be always informed of their kids' physical parameters and, accordingly, take a responsive action [ |
| Sleep monitors | Several diseases like sleep disorders and other neuropsychological may be treated by sleep tracking and monitoring. Smart IoT-driven devices can monitor and generate continuous reports for remotely located clinicians. Certain smart-phone-driven applications that may be connected to the hardware sleep monitors may further aid in controlling the sleep patterns without clinical help [ |
Various types of neural disorders and their symptoms24.
| S. no. | Disorder | Type/example | Symptoms |
|---|---|---|---|
| 1 | Brain injury | Clotting inside the brain; swelling in the brain; | Paralysis; |
|
| |||
| 2 | Brain tumor | Acoustic neuroma; | Severe headache; |
Clinical diagnosis based on the stages of dementia.
| S. no. | Stage of dementia | Symptoms |
|---|---|---|
| 1 | Initial/early stage | (a) Poor memory |
| (b) Loss of all senses of time | ||
| (c) Forgetting the familiar places | ||
| 2 | Intermediate/middle stage | (a) Inability to remember latest events |
| (b) Inability to recall the names of the known people | ||
| (c) Forgetting the location of their home | ||
| (d) Inability to communicate properly with others | ||
| (e) Needing extra care and attention | ||
| (f) Change in routine behaviours like repeating the same sentences | ||
| 3 | Last stage | (a) Completely losing sense about time and locations |
| (b) Inability to recognize the near and dear ones | ||
| (c) Needing assistance in routine activities | ||
| (d) Difficulty in walking and maintaining the balance of the body | ||
| (e) Showing either much aggression or much calmness |
Summary of using IoMT in dementia detection.
| Author | Paper | IoT technology used | Conclusion |
|---|---|---|---|
| Ishii et al. [ | An Early Detection System for Dementia using the M2M/IoT Platform | M2M IoT based sensors, clouds, and actuators were used to observe the behaviour of the person, and then the collected data were compared with the available listed expected behaviour of the patient. | The complete system was capable of detecting the disease in people who are living alone and having no one to observe their behaviour. |
| Rovini et al. [ | How Wearable Sensors Can Support | Wearable sensors were used for the early diagnosis of the dementia, to observe any kind of shaking and to detect extraordinary movements and fluctuations in the body. | The idea behind system generation was to develop an IoT-based perfect system that must be capable of diagnosing dementia and monitoring the patient's behaviour at an early stage so that the situation can be controlled before getting worsen. |
| Hernandez-Penaloza et al. [ | A Multi-Sensor Fusion Scheme to Increase Life | The system was composed of multiple sensors positioned at the patient's home to observe the activities and to take an action in case any abnormality is found. It used a multimodel approach to increase the accuracy of the sensors. The installed sensors wearable bracelets. Wireless sensor network was used to monitor the patient if they left home. | Clinical diagnosis was able to detect the disease progress by observing the activities when the patient was home, which helped better diagnose and detect the problem at the beginning. |
| Garcia-Magarino et al. [ | Framework-Supported Mechanism of Testing Algorithms for Assessing Memory and Detecting Disorientation from IoT Sensors | The researchers created a 3D real-time environment and fixed IoT-based sensors into that environment and applied two algorithms: one was capable of detecting memory of the patient and another one was applied to observe any change in the routine activities or behaviours of the patient with the help of sensors. The algorithms were capable of identifying changed behavioural pattern and thus diagnose the problem at an early stage. | If implemented by practitioners, the used algorithm was capable of identifying memory loss and dementia if it actually occurs. |
| Chong et al. [ | Predicting Potential Alzheimer Medical Condition in Elderly using IOT Sensors: A Case Study | The researchers tried to use sensors like RFID-enabled hand band along with IR room locator to observe the activities of elderly people in their homes. Three variables were used that are capable to identify whether the person has dementia or not. Furthermore, using these three variables, a prediction model was generated to predict the disease by obtaining the sensor data. The sensors can sense the patient's condition by observing patient's activeness or negligence through monitoring gas, water taps, electric switches, and TV being switched on and off. | Although the system worked well in identifying the mental state of the person, there were some drawbacks. First was the quality of the used sensors. Good quality sensors were able to provide more accurate results. Second was the model providing the same results for Parkinson's disease, Alzheimer's disease, and dementia. |
| Tan and Tan [ | Early Detection of Mild Cognitive Impairment in Elderly through IoT: Preliminary Findings | The researcher proposed a methodology to identify the symptoms of elderly people that leads to the beginning of dementia and immediately starting proper medication to slow down the illness as there is no proper medicine that can completely stop the dementia. Tractable and unnoticeable IoT-based sensors were implanted in the houses of two sets of people: one set for healthy people and another set for people that are suffering from behavioural changes. Collected data of sensors from both sets were compared, and then, a pattern was analysed to identify whether the person is healthy or not. | Early results were obtained because using IoT devices was a fruitful step in starting the treatment. |
| Enshaeifar et al. [ | Internet of Things for Dementia Care | Here, the researchers proposed a method named technology integrated health management. TIHM was applied with the help of IoT devices. Various machine learning algorithms had been used to foster the information of the patient. TIHM has the capability to work in real-time environment and to notify healthcare professional of the continuous health status of the person suffering from dementia. | The system is able to work in real-time environment to retrieve the required information and provide more and suitable information to the patients and the doctors, but the system has reliability and trust issues. |
Figure 2“Demencare” the IoMT environment for dementia care.
Figure 3Organization and flow of data in Demencare.