Managing Perceived Loneliness and Social-Isolation Levels for Older Adults: A Survey with Focus on Wearables-Based Solutions
Abstract
:1. Introduction and Problem Statement
- What is understood by loneliness and social isolation from the multidisciplinary perspectives of technology, social psychology, gerontology, and architecture/building environment?
- What is the interplay between the four aforementioned domains, and how can they converge toward enhanced monitoring and management solutions against loneliness and social isolation in older adults?
- What measures, metrics, and wearable or Internet of Things (IoT) devices are available to quantify different levels of loneliness and/or social isolation among the older population?
- How to apply ML techniques on data harnessed from wearables to offer solutions for loneliness monitoring, prediction, and management?
2. Progress beyond the State of the Art
3. Literature Landscape
3.1. Social-Psychology Aspects
3.2. Gerontology Aspects—Impacts of Loneliness and Social Isolation
3.3. Technology Aspects
- individual mobility-related aspects, such as barrier-free sidewalks and route patterns,
- social mobility-related aspects, such as shared and multi-functional spaces, and
- nature enjoyment, e.g., natural art design or the company of a living pet.
3.4. Architecture and Living-Spaces Aspects
3.5. Inter-Dependencies between Domains
4. Loneliness Measures and Metrics
4.1. Definitions and Widely-Adopted Metrics
4.2. Generic Mathematical Modeling
4.3. Illustrative Example
4.4. Related Metrics
5. Wearable Sensors for Measuring Loneliness and/or Social Isolation Levels
5.1. Sensor Attributes
5.2. Sensor Obtrusiveness
5.3. Energy Consumption
5.4. Data Extraction and Manipulation
5.5. Application Requirements
6. Relationship between Wireless Technologies and Architectural Design Practices
7. Proposed Wearable-Based Monitoring and Management Solutions
7.1. D2D Versus Edge/Cloud-Computing Solutions
7.2. Machine-Learning Aspects and Recommendation Systems
7.3. Recommendation Systems for Loneliness Monitoring and Prediction—A Simple Proof-of-Concept
- Accuracy—This metric tells the correctly predicted observations (positive or negative), divided by the total number of observations. A positive observation here means that a user in the high-loneliness class is correctly predicted as a lonely user.
- Precision—This is defined as the correctly predicted positive values divided by the total predicted positive values.
- Sensitivity—This is defined as the proportion of actual positives identified correctly among all positive and negative predictions.
- ROC-AUC—The Receiver operating characteristic curve (ROC)-Area under the ROC curve (AUC) metric tells how well the model predicts the classes (here, two classes: high loneliness versus low loneliness). Its value lies between 0 and 1. A value close to 1 indicates a better model than a lower value; for the two-class prediction, a value close to indicates a random model.
7.4. Loneliness Monitoring Solutions
- Geospatial data: This first group consists of geo-tagged data, such as mobility data [6] or any location data. Devices with built-in geo-positioning can provide the route patterns and person’s location and proximity to other people. Based on this information, it becomes possible to identify a person’s most popular space, favorite one, how much time they spend there, and whether they are active enough. In addition, proximity information can infer social networking activities concerning other people.
- Socio-medical data: The second group consists of social and/or medical-related data collected from wireless devices [144]. The modern technological market offers a lot of various devices for monitoring sleep, ECG, anxiety levels, stress levels, etc. Examples of such sensors are discussed in Section 5.
7.5. Loneliness Management Solutions
7.5.1. Socio-Technological Solutions
7.5.2. Spatial and Other Non-Technology-Based Solutions
8. Conclusions and Future Perspectives
List of Acronyms
3GPP | Third Generation Partnership Project | |
4G | Fourth generation of cellular networks | |
5G | Fifth generation of cellular networks | |
AAL | Ambient-assisted living | |
AI | Artificial Intelligence | |
ANN | Artificial Neural Networks | |
AP | Access Points | |
API | Application Programming Interface | |
AR | Augmented Reality | |
AUC | Area under the ROC curve | |
BLE | Bluetooth Low Energy | |
CPS | Cyber-physical systems | |
CNN | Convolutional Neural Network | |
COVID-19 | Coronavirus Disease 2019 | |
CPU | Central processing unit | |
CRD | Capital Regional District | |
CSV | Comma Separated Values | |
D2D | Device-to-Device | |
DJGLS | Dong Jong Gierveld Loneliness Scale | |
DNN | Deep Neural Networks | |
ECG | Electrocardiography | |
EDA | Electrodermal activity | |
EEG | Electroencephalography | |
EIPs | European Innovation Partnerships | |
GNSS | Global Navigation Satellite Systems | |
GPS | Global Positioning System | |
GUI | Graphical User Interface | |
HCI | Human-Computer Interactions | |
ICT | Information and Communications Technology | |
IEEE | Institute of Electrical and Electronics Engineers | |
IoT | Internet of Things | |
ISM | Industrial, Scientific, and Medical band | |
kNN | K-Nearest Neighbor | |
LORAWAN | Long Range Wide Area Network | |
LSNS | Lubben Social Network Scale | |
LSTM | Long Short-Term Memory | |
LTE | Long Term Evolution | |
MAC | Medium Access Control | |
MEQ | Morningness-eveningness questionnaire | |
ML | Machine Learning | |
MTR | Mobile Telepresence Robots | |
NA | Negative affect | |
NLP | Natural language processing | |
NN | Neural Network | |
P2P | Peer-to-Peer | |
PA | Positive affect | |
PANAS | Positive and Negative Affect Schedule | |
PHQ9 | Patient Health Questionnaire | |
PPG | Photoplethysmography | |
QoS | Quality of Service | |
RBF | Radial Basis Function | |
REBT | Rational Emotive Behavior Therapy | |
RF | Radio Frequency | |
RNN | Recurrent Neural Network | |
ROC | Receiver operating characteristic curve | |
SDK | Software Development Kit | |
SpO2 | Peripheral capillary oxygen saturation | |
SVM | Support-Vector Machine | |
UCLA | University of California, Los Angeles | |
UWB | Ultra Wide-Band | |
VR | Virtual Reality | |
WAN | Wide Area Network | |
WHO | World Health Organization | |
WiFi | Wireless Fidelity | |
WLAN | Wireless Local Area Network |
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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References | Social Aspects in Loneliness | ML-Based Solutions for Loneliness | Built- Environment and Loneliness Aspects | Gerontology Aspects and Loneliness | Loneliness Metrics | Sensor Data for Loneliness Management |
---|---|---|---|---|---|---|
Hughes et al., 2004 [10] | ● | ❍ | ❍ | ❍ | ◗ | ❍ |
Hawkley and Cacioppo, 2010 [11] | ● | ❍ | ❍ | ❍ | ❍ | ❍ |
Ben-Zeev et al., 2015 [12] | ❍ | ❍ | ❍ | ❍ | ❍ | ● |
Chopik, 2016 [13] | ◗ | ❍ | ❍ | ◗ | ◗ | ❍ |
Wilson, 2017 [14] | ❍ | ❍ | ❍ | ◗ | ◗ | ❍ |
Badal et al., 2021 [15] | ❍ | ● | ❍ | ❍ | ❍ | ❍ |
Lam et al., 2021 [16] | ● | ❍ | ❍ | ❍ | ❍ | ● |
Savage et al., 2021 [17] | ● | ❍ | ❍ | ● | ❍ | ❍ |
Chau and Jame 2021 [18] | ❍ | ❍ | ● | ❍ | ❍ | ❍ |
Latikka et al., 2021 [19] | ● | ❍ | ❍ | ◗ | ❍ | ◗ |
Current survey | ● | ● | ● | ● | ● | ● |
Loneliness-Related Metrics | Description and Applicability |
---|---|
Anthropocentric data | Anthropocentric data include information about a person’s age, gender, height, and weight. According to [15], anthropocentric data could be useful in distinguishing several emotions, such as loneliness, sadness, and fear, in men and women. |
MEQ value | The morningness-eveningness questionnaire [47] can be used to measure the person’s circadian rhythm to produce peak alertness in the morning or evening. MEQ as a predictor of social anxiety was studied in [90], and loneliness relationship to social anxiety was studied in [91]. |
Anxiety level | This parameter can be used to measure trait and state of anxiety. It can also be used to diagnose anxiety and distinguish it from depressive syndromes. Reference [91], for example, studied social anxiety as a significant predictor of loneliness. |
Stress level | This parameter indicates potentially stressful events experienced by person. The causal and correlative links between stress and loneliness were studied, for example, in [92]. |
PANAS value | The PA and NA are dimensions to measure affective experience. PA and NA are found to be strongly related to extraversion and neuroticism personality factors, respectively [47]. Neuroticism and extraversion were shown to influence loneliness levels in [93]. |
Activity level | This can be used to indicate the person’s daily activity. Various activities could be sitting, walking, studying, eating, etc. Activities, such as sitting, lying down, sleeping, etc., which are often performed in a state of low energy consumption, are sedentary activities. A low level of objective physical activity and a high level of sedentary behavior was found to be correlated with higher social isolation and loneliness in older adults, in [61]. |
Heart-rate data | Heart rate data can be used to assess the inter-beat intervals variability in the time domain, frequency domain, and non-linear domain. It could be useful in giving an indirect index of the autonomous nervous system; hence, it is indirectly associated with the feeling of loneliness. The relationship between the heart-rate variability and chronic loneliness was studied, for example, in [94], but only for young women. Another study of the relationship between heart rates and loneliness was also performed in [95], also for young adults. Similar studies in older adults are still missing from the current literature. |
Accelerometer data | Accelerometer data can be obtained from the positional sensors. The components and the time and frequency domain components extracted from accelerometers can be useful in tracking a person’s activity. The activity levels, as discussed a few rows above, can be associated with loneliness levels, and lack of activity can be a predictor of loneliness [61]. |
Sleep quality index | This parameter measures the quality and patterns of sleep and is directly associated with perceived loneliness. This index measures sleep quality in seven subjective domains: sleep quality, sleep latency, sleep duration, habitual sleep efficiency, sleep disturbances, use of sleep medication, and daytime dysfunction [47]. The association between sleep quality and loneliness was studied, for example, in [96], for older adults in rural China. A higher quality of sleep was found to be positively correlated with a lower level of loneliness. |
Proximity data | This data, based, for example, on the positioning or proximity-detection sensors able to estimate the distance between any two persons, can be used to estimate the social interactions among individuals. A study in [97] investigated BLE-based proximity detection, as well as other mobile data, as metrics for loneliness recognition; ML algorithms were used, and prediction accuracies around were achieved. |
Social-network diversity | The diversity of one’s social network (i.e., network size, level of engagement, etc.) was studied to be also correlated with feelings of loneliness and social isolation in [98]. Various social-network features are measurable through a variety of wearables and other IoT sensors, as described in Section 5. |
Brand & Type | Principle of Operation | Cost, € | Input Interface | Lifetime | Weight, Grams | Target Body Part | Type | Measured Parameter | Data Extraction Interface |
---|---|---|---|---|---|---|---|---|---|
Pozyx system | UWB, Accelerometer | ≈100 | Push button | 20 months | 21 | Neck, wrist | Tag & AP | 3D indoor spatio-temporal data | Pozyx Cloud service; CSV |
Oura Ring | Temperature, Heart rate | ≈300 | – | 3–4 days | 6 | Fingers | Ring | Heart rate, sleep pattern, temperature | Oura Cloud service; CSV |
MiniFinder Pico | GPS | ≈150 | Push button | 1 week | 35 | Pocket, neck | Tag | Outdoor spatio-temporal data | Remote API access through web services |
Moodmetric Ring | EDA | ≈500 | – | 4–7 days | 6–10 | Fingers | Ring | Stress levels, sleep pattern | Moodmetric app, Cloud services, and API |
Withings ScanWatch | PPG, Accelerometer, ECG, EDA, Temperature, Pedometer | ≈300 | Rotating Crown | 30 days | 83 | Wrist | Smart watch | Heart rate, activity, sleep, breathing disturbances | Moodmetric app, Cloud services, API |
Imosi Smart Bracelet P11 | PPG, Accelerometer, ECG, EDA, Temperature, Pedometer | ≈70 | GUI | 6–7 days | 26 | Wrist | Smart watch | Heart rate, blood pressure, activity, sleep, breathing disturbances | P11 app, Cloud services, API |
Fitbit Luxe | Heart rate, SpO2, sleep patterns, breathing rate, skin temperature | ≈150 | GUI | 4–5 days | 16 | Wrist | Smart watch | Heart rate, activity, sleep pattern, stress | Fitbit app, Cloud services, API |
Garmin Instinct | GPS, heart rate, blood oxygen, sleep, activity | ≈200 | GUI | 1–3 days | 52 | Wrist | Smart watch | Heart rate, activity, outdoor spatio-temporal data, stress | Garmin Explore app, Cloud services, API |
Proximity-Based D2D | Edge Computing | Cloud Computing | ||||||
---|---|---|---|---|---|---|---|---|
Network | Short-Range P2P | Short-Range WLAN | Long-Range | |||||
Wireless technology | BLE (v5.3) | WiFi Direct | LTE direct (3GPP Rel.12) | WiFi-4 (IEEE 802.11n) | WiFi-5 (IEEE 802.11ac) | WiFi-6 (IEEE 802.11ax) | LTE/4G (3GPP Rel.8) | 5G (3GPP Rel.16) |
Frequency Band (GHz) | 2.4 | 2.4; 5 | 0.45–3.7 | 2.4; 5 | 5 | 2.4; 5; 6 | 0.45–3.7 | < 1; 1–7; 24–29 |
Channel Bandwidth (MHz) | 2 | 20 | 1.4, 3, 5, 10, 15, 20 | 20, 40 | 20, 40, 80, 160 | 20, 40, 80, 160 | 1.4, 3, 5, 10, 15, 20 | Up to 100 |
Channel Access Method | FH-CDMA, CSMA/CA, TDMA | CSMA/CA, SDMA | OFDMA, SC-FDMA | SDMA | CSMA/CA, SDMA | OFDMA | OFDMA, SC-FDMA | OFDMA |
Expected data rate (Mbit/s) | 2 | 250 | 100–300 | 600 | 6900 | 9600 | 300 | 10,000 |
Relative Latency | Average | Average-Low | Average-Low | Low | Ultra Low | Low | Low | Ultra Low |
Reliability | Not guaranteed (ISM band) | Low (depends on the network awareness) | Not guaranteed (ISM band) | High (cellular operator-guaranteed) |
ML Algorithm | Refs. | Applicability | Benefits | Challenges |
---|---|---|---|---|
Bayesian classifier | [141] | Building recommendation systems, combined with collaborative filtering approaches | Performs well with the categorical data | Requires a set of independent features which may be hard to acquire |
Decision trees | [141] | Mental health and loneliness prediction | Generates easy-to-explain models and handles missing values well | With larger and complex datasets, it requires more time to converge and suffers from higher complexity |
Ensemble learning | [142,143] | Recommendation systems and prediction of loneliness levels | Improves the generalization capacity of the model and makes predictions using data-fusion techniques for multiple data sources | Handling of accuracy and diversity among the individual models in an ensemble and handling high numbers of the members used for constructing an ensemble are difficult |
Logistic Regression | [48] | Classification of older adults into loneliness classes, recommendation systems | It performs well with linearly separable and simple datasets | This algorithms not converge well for non-linear problems |
NN | [141] | Loneliness prediction using time and frequency domain feature set from sensor data, recommendation systems | Good performance for complex datasets and non-linear problems | It requires a significant amount of training data and may lead to over-fitting and generalization |
Random Forest | [15] | Classification loneliness levels using different sensor data, recommendation systems | Works well with categorical and numerical values | It is not easy to interpret for larger datasets |
SVM | [15,141] | Loneliness monitoring based on selected features, recommendation systems | Widely used, typically good performance in classification with low number of classes (e.g., two class problem of high-level versus low-level of loneliness) | SVM may be not very suitable for very large and very noisy datasets and may under-perform in such cases |
ML Algorithm | Accuracy | Precision | Sensitivity | ROC-AUC |
---|---|---|---|---|
Logistic Regression | 1 | |||
Random Forest | 1 | |||
SVM |
Challenge | Groups | Refs. | Observed existing approach |
---|---|---|---|
Change of the computing paradigm/service in a seamless manner | T | [187] | Application of ML strategies with improved awareness |
[188,189] | Integrated software enablers for scheduling and technology selection | ||
[190,191] | Implementation of on-the-fly digital twin deployment approaches | ||
Energy consumption-aware data processing | T | [192] | Lightweight technique for on-the-fly data encryption with pre-processing |
[193] | Energy-aware wearable sensing strategies | ||
[194] | Activity recognition-based strategy for adaptive compression | ||
Lack of network and system resources | T | [195,196] | Offloading via proximity-based P2P network |
[197] | D2D strategies based on multi-cast for improving QoS | ||
[198] | Utilization of approximate computing techniques for computing resources identification | ||
Challenges related to ML utilization; also see Table 5 | T | [199] | ML-based authentication in IoT systems |
[200] | Ultra-low-power on-chip training and inference commands for power and computational efficiency for ML operation enablers | ||
[201] | Reduction of the overall execution time for classification problems, anomaly detection, etc. | ||
Security and privacy-related aspects | T | [202] | Advance asymmetric encryption-based protocols |
[203,204] | The use of lightweight crypto-primitives to reduce the CPU load | ||
[205] | Integration of device/primitive-specific accelerators | ||
[206] | Identification new thresholds to fulfill application-specific security/privacy demands | ||
Subjective interpretations may be hard to quantify or measure | S | [207] | Loneliness as a complex and multidimensional problem |
[207] | Understanding loneliness from a social-psychology perspective | ||
[208] | Combating loneliness with nostalgia | ||
Dealing with cognitive impairments at older age | G | [209] | Creating supportive conditions which reduce the demand for controlled processing; training recollection, etc. |
[210] | aerobic exercise and dietary approaches | ||
Ambiguous and heterogeneous intervention studies with elderly | G | [180] | Combined community-based and individual approach for interventions |
[178] | Theory-based approaches for social relationships and skill-building interventions | ||
Avoiding ageism and age-segregation problems | A, T | [174] | Multiple benefits when inter-generational integration is achieved in urban/smart dwellings |
[211] | Implementation of ICT-based solutions for aging-in-place | ||
Good access to healthcare while aging-in-place | A, G | [52,53] | Sense of place and sense of belonging, as well as known, lifetime friends and neighbors, can diminish feelings of loneliness; however, the same healthcare facilities as in an institutionalized environment may not be available |
Choice of loneliness metrics among the existing ones | S, T | [10,78,79] | UCLA loneliness scale |
[80,81] | DJGLS loneliness scale | ||
[82,83] | LSNS loneliness scale | ||
Trade-off between resources—affordability of a living space and social sustainability | A, S, T | [59] | Use of ICT and AI for achieving best trade-offs |
[212] | Integrating social-justice concept for increased well-being | ||
Taking into account the time variability and other dynamic behavior | S, T, G | [213] | Chronic versus acute social isolation and loneliness |
[214] | Acute loneliness & Rational Emotive Behavior Therapy (REBT) | ||
Attain a close-to-zero learning barrier | S, T, G | [215] | Life-time engagement in stimulating learning activities |
[216] | Access to better instructions and support in using ICT tools | ||
Lack of underlying models relating sensor data to loneliness levels | T, S, A, G | [90,91] | MEQ, social anxiety, and loneliness inter-dependencies |
[208] | Nostalgia & loneliness | ||
[93] | Neuroticism, extraversion, and loneliness | ||
[61] | Physical activity and loneliness | ||
[94,95] | Heart rate and loneliness |
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Site, A.; Lohan, E.S.; Jolanki, O.; Valkama, O.; Hernandez, R.R.; Latikka, R.; Alekseeva, D.; Vasudevan, S.; Afolaranmi, S.; Ometov, A.; et al. Managing Perceived Loneliness and Social-Isolation Levels for Older Adults: A Survey with Focus on Wearables-Based Solutions. Sensors 2022, 22, 1108. https://doi.org/10.3390/s22031108
Site A, Lohan ES, Jolanki O, Valkama O, Hernandez RR, Latikka R, Alekseeva D, Vasudevan S, Afolaranmi S, Ometov A, et al. Managing Perceived Loneliness and Social-Isolation Levels for Older Adults: A Survey with Focus on Wearables-Based Solutions. Sensors. 2022; 22(3):1108. https://doi.org/10.3390/s22031108
Chicago/Turabian StyleSite, Aditi, Elena Simona Lohan, Outi Jolanki, Outi Valkama, Rosana Rubio Hernandez, Rita Latikka, Daria Alekseeva, Saigopal Vasudevan, Samuel Afolaranmi, Aleksandr Ometov, and et al. 2022. "Managing Perceived Loneliness and Social-Isolation Levels for Older Adults: A Survey with Focus on Wearables-Based Solutions" Sensors 22, no. 3: 1108. https://doi.org/10.3390/s22031108
APA StyleSite, A., Lohan, E. S., Jolanki, O., Valkama, O., Hernandez, R. R., Latikka, R., Alekseeva, D., Vasudevan, S., Afolaranmi, S., Ometov, A., Oksanen, A., Martinez Lastra, J., Nurmi, J., & Fernandez, F. N. (2022). Managing Perceived Loneliness and Social-Isolation Levels for Older Adults: A Survey with Focus on Wearables-Based Solutions. Sensors, 22(3), 1108. https://doi.org/10.3390/s22031108