| Literature DB >> 35342749 |
Abbas Sheikhtaheri1, Farveh Sabermahani1.
Abstract
Objectives: We aimed to identify and classify the Internet of Things (IoT) technologies used for Alzheimer's disease (AD)/dementia as well as the healthcare aspects addressed by these technologies and the outcomes of the IoT interventions. Methodology. We searched PubMed/MEDLINE, IEEE Explore, Web of Science, OVID, Scopus, Embase, Cochrane, and Google Scholar. In total, 13,005 papers were reviewed, 36 of which were finally selected. All the reviews were independently carried out by two researchers. In the case of any disagreement, the problem was resolved by holding a meeting and exchanging views. Due to the diversity of the reviewed studies, narrative analysis was performed.Entities:
Mesh:
Year: 2022 PMID: 35342749 PMCID: PMC8948545 DOI: 10.1155/2022/6274185
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1IoT applications in healthcare.
Inclusion and exclusion criteria.
| Inclusion criteria | (1) Papers published in peer-reviewed journals and conferences, the full text of which was available |
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| Exclusion criteria | (1) Letters to the editor and editorials |
Figure 2PRISMA flow diagram of study identification.
Figure 3Geographical distribution of studies.
Figure 4Distribution of the studies in terms of publication year.
Figure 5Intervention duration in different studies.
Figure 6Intervention place in different studies.
Typology of IoT technologies used for AD/dementia.
| Type of technology | Objectives | Examples of applications | Some limitations |
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| Sensors (36 studies) | |||
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| Inertial sensors (accelerometer, gyroscope, magnetometer) (17 studies) [ | Recognizing physical activity and status of patients (standing, sitting, lying down, walking) [ | (i) Using wearable sensors attached to the chest and shoes [ | Current accelerometers do not specify place of performing activities at home [ |
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| Switch sensors (14 studies) [ | Installing switch sensors on doors and home appliances to monitor their use [ | (i) Recognizing proper performance of activities and activity duration | (i) Relatively high energy consumption when sending and displaying information on the monitors [ |
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| Sensors for vital signs (11 studies) [ | Getting information about the patient's health including physical activities and vital signs [ | (i) Receiving data on blood pressure, body temperature, pulse, oxygen saturation, weight and hydration, daily step count and amount of physical activity, respiratory rate, and body movement, even during sleep [ | Possible impairment in estimating heart rate and breathing rhythm during sleep due to type of body movement in sleep [ |
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| Pressure sensor (17 studies) [ | Using sensors to measure body movement and monitoring sleep pattern [ | (i) Measuring bedtime, sleep duration and breaks, and sleep quality [ | Misrecognizing the sleep mode when the person is calm and motionless in bed [ |
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| Infrared (IR) sensor (15 studies) [ | Monitoring the places where the person is present during the day and night using activity recognition [ | (i) Activity recognition | (i) Difficulty in recognizing the person's location when other people are present [ |
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| Cameras (18 studies) | |||
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| Red-green-blue-depth (RGB-d) camera (16 studies) [ | Depth cameras collect images and depth data and provide various data such as RGB, depth, infrared, patient skeleton movement recognition, and tracking data. Analyzing these data makes it possible to monitor patients' progress during rehabilitation | (i) Tracking the patients using a camera along with inertial sensors or IR [ | Lack of enough accuracy for differentiating the activities related to the joints and small actions (e.g., eating and taking medication both involve the hand joints) [ |
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| Ordinary (cameras without sensors) (5 studies) [ | Video camera is used at smart homes in different places [ | (i) Establishing a video surveillance system to prevent unwanted accidents for the patient during daily high-level activities such as cooking [ | A large volume of data is gathered by this type of camera, and a great amount of additional data is gathered by the recorded images [ |
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| Global positioning system (GPS) (7 studies) [ | Tracking or positioning systems can indicate the location of the person with dementia [ | (i) Providing security for patients with dementia, especially when they suffer from agitation and depression [ | (i) GPS is not accurate enough indoors to locate the person [ |
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| Communication technology | |||
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| Bluetooth (4 studies) | (i) Using Bluetooth technology to detect objects by tags that are enabled by proximity beacon [ | (i) Possibility of installing positioning sensors on the walls along with Bluetooth tags attached to wheelchairs and patient equipment for tracking patients, especially when people with cognitive impairment disconnect wearable devices or those attached to the body [ | |
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| ZigBee (3 studies) | (i) Using ZigBee to identify the person's location [ | (i) Appropriate accuracy using ZigBee along with IR sensors and combining the data of these two to locate the person [ | (i) ZigBee is commonly used in conjunction with other technologies and most of the people are reluctant to carry multiple devices, so ZigBee application is limited [ |
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| Radio frequency identification (RFID) | Each active entity should be equipped with barcode-sized tags for unique identification. The data transmitter to the RFID server periodically retrieves the data from the tags and transmits them via Wi-Fi or Bluetooth [ | (i) Increasing use of RFID in Internet of Things (IoT) to connect entities to the Internet [ | |
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| Near field communication (NFC) (1 study) [ | Measuring devices containing NFC equipment are installed in fixed locations to determine the position and recognize activities [ | (i) Installing an NFC tag on a specific place such as a dining table to sense the NFC tag installed on the medicine box and diagnose medicine consumption by the patient [ | NFC should be used along with a camera to improve accuracy in recognizing activities [ |
Results of using IoT technologies for monitoring purposes and its outcomes.
| Aspects of care | Examples of positive or negative outcomes |
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| Diagnosis (14 studies) [ | + Internet of Things (IoT) technology made it possible to monitor and compare the activity pattern of persons with mild cognitive impairment (MCI) with healthy elderly persons over a period of several months and diagnosed with Alzheimer's disease based on pattern changes [ |
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| Activity of daily living (ADL) (27 studies) [ | + IoT technology made it possible to extract behavioral patterns by examining the person's ADLs and recognizing unusual and dangerous behaviors [ |
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| Sleeping (19 studies) [ | + Sleep monitoring using IoT is a good criterion for the early diagnosis of dementia [ |
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| Medication (9 studies) [ | + IoT technology can monitor adherence to the medication regimen and gives the necessary alerts to healthcare providers or informal caregivers in the shortest time [ |
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| Vital signs (11 studies) [ | + IoT technology enabled users to make alerts in the event of observing abnormalities in the patient's vital signs, along with a list of necessary actions in the case of encountering any alert [ |
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| Agitation (9 studies) [ | + IoT technology can reduce the stress and anxiety of the patient and their caregivers using warning messages appropriate to the patient's wandering and agitation state as well as severity of the danger that threatens them [ |
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| Memory (5 studies) [ | + IoT can remind people of different types of activities and reduce dependence on others to help them remember to do ADLs correctly [ |
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| Social interaction (4 studies) [ | + Accurate and continuous monitoring of social interactions using IoT showed individuals with better social interactions obtained higher scores in executive function tests [ |
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| Apathy (3 studies) [ | + Behavioral patterns of patients can be examined to monitor normal and abnormal behaviors as a sign of apathy in individuals using the data obtained from the IoT-enabled systems [ |
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| Movement (23 studies) [ | + Using IoT for continuously assessing walking speed at home provided a better understanding of changes in people's speed over time [ |
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| Tracking (12 studies) [ | + Patients who go out of the safe area could be identified using IoT, and their location could be tracked and informed to their caregivers using mobile phones [ |
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| Fall (8 studies) [ | + IoT could reduce the risk of falling [ |
+ indicates positive outcomes, and – indicates negative outcomes.
Technology evaluations.
| Technology evaluation | Examples of evaluation results | Aspects of care |
|---|---|---|
| Feasibility (3 studies) [ | + It is feasible to identify relationship among some events that are difficult for the treatment team to observe without using IoT-based monitoring system [ | Activities of daily living (ADL), sleeping, movement, tracking |
| - Feeling uncomfortable while doing activities [ | ADL | |
| - Long-term monitoring scenarios were undesirable [ | ADL | |
| - Difficulty in performing some activities using IoT technologies such as retrieving objects or making a phone call [ | ADL | |
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| Usability (3 studies) [ | + The caregivers usually indicate the usefulness of the system in the following cases: | ADL, sleeping, agitation, memory, movement, tracking, fall, vital signs |
| - Global positioning system (GPS), despite being available in a price range suitable for people at different levels, is not widely used in practice, except in clinical studies [ | Tracking | |
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| Acceptability (3 studies) [ | + Given that collecting some patients' data is not possible with current care methods such as distance traveled, routes within the care unit, time spent in each area, wandering, and waking up at night, this technology is acceptable by the medical team [ | ADL, sleeping, movement, tracking |
| + Daily activity monitoring system is acceptable for patients [ | Diagnosis, ADL, sleeping | |
| + This technology is considered desirable by many users [ | ADL, tracking, movement | |
| - 67% of the participants were willing to be evaluated by the sensor at the place of residence only for a limited time during the day (not for long duration) [ | ADL, tracking, movement | |
+ indicates positive results, and – indicates negative results.
Figure 7IoT technologies implemented and evaluated for various aspects of AD/dementia.