| Literature DB >> 27886155 |
Basel Kikhia1, Thanos G Stavropoulos2, Stelios Andreadis3, Niklas Karvonen4, Ioannis Kompatsiaris5, Stefan Sävenstedt6, Marten Pijl7, Catharina Melander8.
Abstract
Stress is a common problem that affects most people with dementia and their caregivers. Stress symptoms for people with dementia are often measured by answering a checklist of questions by the clinical staff who work closely with the person with the dementia. This process requires a lot of effort with continuous observation of the person with dementia over the long term. This article investigates the effectiveness of using a straightforward method, based on a single wristband sensor to classify events of "Stressed" and "Not stressed" for people with dementia. The presented system calculates the stress level as an integer value from zero to five, providing clinical information of behavioral patterns to the clinical staff. Thirty staff members participated in this experiment, together with six residents suffering from dementia, from two nursing homes. The residents were equipped with the wristband sensor during the day, and the staff were writing observation notes during the experiment to serve as ground truth. Experimental evaluation showed relationships between staff observations and sensor analysis, while stress level thresholds adjusted to each individual can serve different scenarios.Entities:
Keywords: clinical assessment; dementia; nursing homes; sensors; stress monitoring
Mesh:
Year: 2016 PMID: 27886155 PMCID: PMC5190970 DOI: 10.3390/s16121989
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Comparison of the related work.
| Authors | Sensors | Analysis | Application Domain |
|---|---|---|---|
| (Setz et al., 2010) | Wearable electrodermal activity (EDA) device. | Calculate the stress level from the EDA data | Personal health system at the workplace |
| (Zhai et al., 2006) | Sensors placed on the hand: galvanic skin response (GSR), blood volume pulse (BVP), skin temperature (ST), and eye gaze tracking instrument: pupil diameter (PD) | Calculate the stress level from the collected data | Emotion recognition system |
| (Hosseini et al., 2010) | Flexcom Infiniti biofeedback device: skin conductance (SC), photoplethysmograph (PPG), respiratory rate (RR) and EEG. | Calculate the stress level by analyzing multi-modal bio-signals | Emotional stress recognition system |
| (Kirschbaum et al., 1989) | N/A | Calculate the stress level from the cortisol level in saliva | N/A |
| (Lupien, 2013) | Simple vital signs monitor | Calculate the stress level from the blood pressure | N/A |
| (Villarejo et al., 2012) | Two electrodes placed on the fingers: Galvanic Skin Response (GSR) | Calculate the stress level based on GSR data | Stress monitoring system |
| (Bakker et al., 2011) | Watch-style stress measurement device: Galvanic Skin Response (GSR) | Calculate the stress level based on GSR data | Stress management system |
| (Perala et al., 2007) | Armband worn on the back of the upper arm: Galvanic Skin Response (GSR) | Calculate the stress level based on GSR data | Stress monitoring system |
| (Hernandez et al., 2011) | Wrist skin conductance sensor: Galvanic Skin Response (GSR) | Calculate the stress level based on GSR data | Stress monitoring system |
| (Sarker et al., 2016) | Chest-worn band (Accelerometer, respiration, electrocardiogram (ECG)) | Predict significant stress episodes from time-series data | Just-in-time interventions at work or daily life |
| (Gjoreski et al., 2015) | Smartphone: Accelerometer, Audio (ambient noise), Wi-Fi, Call logs, Battery level, Light | Assess student behavior from sensors and questionnaires | School student stress assessment |
| (Vic Rodney., 2000) | N/A | Calculate the stress/aggression level based a checklist of questions | Stress monitoring system, Dementia Care |
| (Mackay et al., 1978) | N/A | Calculate the stress/aggression level based on a checklist of questions | Stress monitoring system, Dementia Care |
| (Vedhara et al., 1999) | N/A | Calculate the stress using Global Measure of Perceived Stress scale | Dementia Care |
| (Cohen et al., 1983) | N/A | Calculate the stress using Global Measure of Perceived Stress scale | N/A |
| (Algase et al., 2003) | Step watch | Assess the wandering behavior, and use it as a sign for stress | Stress monitoring system, Dementia Care |
| Our Approach | Wristband sensor: Galvanic Skin Response (GSR), accelerometers data (ACC) | Calculate the stress level based on GSR and ACC data | Stress monitoring system, Context management, User profiling, Dementia Care |
Figure 1Philips DTI-2 wristband sensor.
Figure 2An observation note filled in by the staff for a participant over a week.
Figure 3The overall design of the study.
Observation note instances per user, showing the positive and negative count, and positive instances percentage to total.
| User | Positive (Stressed) | Negative (Not Stressed) | User Total | Positive/User Total |
|---|---|---|---|---|
| User 1 | 42 | 464 | 506 | 8.30% |
| User 2 | 8 | 379 | 387 | 2.07% |
| User 3 | 29 | 193 | 222 | 13.06% |
| User 4 | 41 | 223 | 264 | 15.53% |
| User 5 | 101 | 254 | 355 | 28.45% |
| User 6 | 19 | 689 | 708 | 2.68% |
| All Users | 240 | 2202 | 2442 | 9.83% |
Figure 4Class distribution in the dataset as a percentage of instances of stress reported in observation notes out of the total hours logged.
Information schema for representing ground truth from clinical notes and analyzed sensor input.
| Field | Person ID | Start Time | End Time | Type | Provider |
|---|---|---|---|---|---|
| Type | String | Datetime as a UNIX Timestamp | Datetime as a UNIX Timestamp | ‘Not Stressed’ or ‘Stressed’ | ‘Clinical Notes’ or ‘Sensor’ |
Performance metrics per stress level threshold.
| Metric/Stress Level Threshold | 0 | 1 | 2 | 3 | 4 | 5 |
|---|---|---|---|---|---|---|
| Precision | 9.9% | 12.1% | 13.9% | 19.1% | 20.9% | 4.2% |
| Recall | 100.0% | 81.7% | 65.9% | 48.2% | 20.4% | 0.9% |
| Accuracy | 9.9% | 43.3% | 59.8% | 75.9% | 85.0% | 89.4% |
| F-measure | 17.6% | 20.7% | 22.6% | 26.8% | 18.9% | 1.4% |
Figure 5Performance metrics across different stress level thresholds.
Figure 6Performance metrics of the personalized threshold method to optimize F-Measure, per each user.
Figure 7Web application showing daily average stress level.
Figure 8Dashboard for the clinicians to run analysis, setting a personalized stress level threshold (“Threshold”) for each user (anonymized drop-down menu) and time period (“From”–“To” fields).
Figure 9View of High Stress level problems, according to personalized thresholds.