Healthy Ageing: A Decision-Support Algorithm for the Patient-Specific Assignment of ICT Devices and Services
Abstract
:1. Introduction
2. Materials and Methods
- Multidimensional assessment: elders’ health evaluation by a multidisciplinary staff of clinical and social operators. The multidimensional screening of elders’ health allows for gathering the information representing the knowledge base of the reasoning system to determine a course of action.
- Data preprocessing: this is a crucial phase to make the data available for algorithm development. Data are cleaned and coded in a standardised format according to the nature of the acquired variables.
- Algorithm development: this is a crucial step in the developed methodology since it refers to the logic behind the decision-support tool. It follows a decision tree approach showing the various outcomes from a series of decisions. The identification of products and services is based on the patient’s profile.
- Algorithm implementation: it describes the process of converting the decisional model into code. Visual Basic for Applications (VBA) was chosen as the programming language for its ease of use, which is indispensable in a preliminary study.
- Validation: evaluation of the reliability and consistency of the algorithm itself through a specific validation protocol applied to a sample of participants.
2.1. Data Collection
2.1.1. Multidimensional Assessment
2.1.2. Devices and Services Set
- A social operator for animation and entertainment activities.
- It may be proposed to an elderly person who is particularly active with no mobility limitations that they volunteer in their community. It is an excellent opportunity to share their experiences, help needy people, and make new friends.
- Some kind of physical activity at low or moderate intensity is essential in old age and is associated with many health benefits.
2.2. Data Preprocessing
2.3. Decisional Analysis and Algorithm Development
- Digital devices, with different functionalities and technological impacts depending on the particular ability of the patient;
- Social and healthcare services offered and suggested to the elderly to improve their well-being and quality of life in the specific needed area.
2.4. Algorithm Implementation
2.5. Validation
3. Results and Discussion
3.1. Study Participants
3.2. Statistical Description of Participants
3.3. Algorithm Validation
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Test | Description | Score | Cutoff Points |
---|---|---|---|
Timed up and go (TUG) | It is performed to assess the fall risk of a user by measuring the amount of time a person is required to stand up from a chair, walk 3 m, turn around, walk back to the chair, and sit down. | N/A | ≥20 s high falls risk |
Berg Balance Scale (BBS) | It is a 14-item scale that evaluates the balance ability of a person performing a series of tasks. Each item consists of a five-point ordinal scale ranging from 0 to 4, with 0 indicating the lowest and 4 the highest level of function. | It ranges from 0 to 56 where: Low fall risk: 41–56 Medium fall risk: 21–40 High fall risk: 0–20 | ≥41 low falls risk |
Walking Handicap Scale (WHS) | It determines the mobility quality in the home and the community contexts across 6 categories. | Physiological walk: 1 Domestic walk with limitations: 2 Domestic walk without limitations: 3 Social walk with major limitations: 4 Social walk with some limitations: 4 Social walk without limitations: 6 | <5 limited walk |
Modified Barthel Index (MBI) | A validated scale is used to measure the performance in activities of daily living (ADL) along 10 items. | It ranges from 0 to 100 where: Total dependence: 0–24 Severe dependence: 25–49 Moderate dependence: 50–74 Mild dependence: 75–90 Minimum dependence: 91–900 Independence: 100 | <91 dependence |
Geriatric Depression Scale (GDS) | It consists of a 30 question-survey designed to rate depression in elderly patients. It is not recommended to use GDS when the patient is characterised by severe dementia. | It ranges from 0 to 30 where: No depression: 0–10 Low-moderate: 11–16 Severe: ≥17 | >10 depression |
Mini-Mental State Examination (MMSE) | A validated tool to assess cognitive function through seven domains (orientation to time, orientation to place, three-word registration, attention and calculation, three-word recall, language, and visual construction). | It ranges from 0 (severe cognitive impairment) to 30 (no cognitive impairment). An MMSE score greater or equal to 24 is considered normal cognitive function, while scores less than 24 indicate cognitive impairment. Then, the MMSE score can be corrected according to age and education. | ≤15 severe dementia |
Zung Anxiety | Zung anxiety scale presents 20 items that ask how the patient has felt or behaved during the past several days. The items are judged on a four-points system, considering severity. Four anxiety categories are identified; the higher the total score, the higher the anxiety level. | It ranges from 0 to 80 where: Low anxiety level: 20–31 Low-medium anxiety level: 32–43 Medium anxiety level: 44–55 Medium-high anxiety level: 56–67 High anxiety level: 68–80 | >40 anxiety |
Mini Nutritional Assessment (MNA)-Short form | It allows a rapid assessment of the nutritional status of the elderly. The shortened version consists of six items incorporating anthropometric measurements, dietary intake, and global- and self-assessment components. | The total score ranges from 0 to 14 where: Malnourished: 0–7 At the risk of malnutrition: 8–11 Normal nutritional status: 12–14 | <12 abnormal nutritional status |
Body Mass Index (BMI) | It refers to the nutritional status of adults. It is defined as a person’s weight in kilogrammes divided by the square of the person’s height in metres (kg/m2). | Underweight: less than 18.5 Normal weight: 18.5 to 24.9 Overweight: 25 to 29.9 Obesity class I: 30 to 34.9 Obesity class II: 35 to 39.9 Obesity class III: above 40 | <18.5 or >24.9 abnormal nutritional status |
Dichotomous Variable | Description |
---|---|
Previous falls | History of previous falls defined as “unexpected events in which the user come to rest inadvertently on the ground, floor, or lower level” |
Walking aids | Use of any device designed to assist walking or otherwise improve the mobility of people (e.g., canes, crutches, or walkers) |
Living alone | A person living alone in their household, independent from marital status, the number of children, friends, and relatives |
Social relationship | Sporadic relationships with family, friends, and neighbours |
Conflicting relations | Quarrels and conflicts that broke the relationship |
Recent loss | Death of a loved person in the past seven months |
Handgrip strength | An indicator of overall muscle strength. It is measured as the amount of static force in kilogrammes that the hand can squeeze around a dynamometer. The mean value of three tests was acquired, and the highest value between the two hands was considered. Cutoff values are <27 kg (male) and <16 kg (female) [19] |
Muscle mass | The amount of skeletal muscle mass assessed through the BIA. Cutoff values are <20 kg (male), and <15 kg (female) [19] |
Normal hydration | Assessment of total body water through bioimpedentiometry |
Physical inactivity | Sedentary lifestyle |
Cardiovascular risk factors | Presence of at least one of the following risk factors: smoke, diabetes, hypercholesterolemia, obesity, familiarity |
Hypertension | Occurs when the systolic blood pressure measurements on two days are ≥140 mmHg and the diastolic blood pressure readings on both days are ≥90 mmHg |
Previous syncope | Defined as a transient loss of consciousness and inability to maintain the postural tone, followed by spontaneous recovery. It is acquired based on anamnestic data of the user |
Previous cardiovascular event | Being subjected to a previous cardiovascular event such as cardiopathy, atrial fibrillation, acute myocardial infarction, chronic ischemic cardiomyopathy, stroke, or heart failure |
Kidney failure | Creatinine clearance level 30–59 mL/min |
PMK | Having a pacemaker device |
ICD | Having an implantable defibrillator |
House pet | Pet ownership |
Wi-fi | Presence of an Internet connection within the house |
Several floors home | Having a house with multiple floors |
Elevator | Presence of an elevator or a stairlift |
Car owner | Owning a car and being able to drive it |
Eye deficit | Refers to the presence of sight deficit assessed based on anamnestic data of the user |
Vision eyewear | Eyeglasses for vision correction |
Hearing deficit | It refers to the presence of a hearing deficit assessed during the interview with the person |
Hearing aids | Wearing assistive listening devices |
Smartphone | Having a personal smartphone for communication |
Hand prosthesis | Having at least a hand prosthesis |
Type | Products | Type | Services | |
---|---|---|---|---|
Wearables | ECG (Apple®), Pulse oximetry (Apple®), Fall detection (Microtecno®, Apple®) | Social support | Home care, animation, walking aids, volunteering, physical activity | |
Non-wearables | ECG (AliveCor®), Blood pressure (Omron®), Body composition smart scale (Renpho®) | Psychological support | Group therapy, occupational therapy | |
Ambient | Fall detection (Vayyar®) | Transport | Mobility of the elders | |
Communication | Tablet (MICROTECH®) and smartphone (Apple®) | Follow-up visits | Neurological, nutritional, renal functionality, hearing, vision, fall reconstruction |
Type | Criteria |
---|---|
Inclusion | Over 75 years old |
Grade I, II, III of Rankin modified scale | |
Exclusion | Severe cognitive impairments |
Severe or terminal illness, with a survival diagnosis of fewer than 12 months |
Item | Yes | Item | Yes | |
---|---|---|---|---|
Technological Class: | Living alone | 50% | ||
Active | 20% | Recent loss | 28% | |
Passive | 80% | Social relationships | 76% | |
House pet | 30% | Normal hydration | 24% | |
Wi-fi | 36% | Smoking | 26% | |
Several floors home | 60% | Hypertension | 98% | |
Car owner | 42% | Diabetes | 16% | |
Prostheses: | Familiarity | 34% | ||
Hand | 2% | Hypercholesterolemia | 62% | |
Knee | 6% | Smoking | 26% | |
Hip | 4% | Obesity | 38% | |
Shoulder | 4% | Cardiopathy | 80% | |
Eye deficit | 54% | Atrial Fibrillation | 20% | |
Hearing deficit | 48% | Acute Myocardial Infection | 10% | |
Smartphone | 22% | Chronic Ischemic Cardiomyopathy | 16% | |
Education level: | Ictus | 6% | ||
Elementary school | 48% | Heart failure | 2% | |
Intermediate school | 10% | PMK | 4% | |
High school | 6% | DFB | 4% | |
University | 4% | Previous syncope | 24% | |
Previous falls | 50% | Physical inactivity | 24% | |
Walking aids | 36% | Chronic Renal Insufficiency | 18% |
Questionnaire/Test | Mean ± Dev. Std | Questionnaire/Test | Mean ± Dev. Std |
---|---|---|---|
MBI | 94.46 ± 15.13 | Handgrip | 17.14 ± 7.81 [kg] |
TUG | 17.00 ± 9.31 [s] | Male | 17.74 ± 7.73 [kg] |
BBS | 44.94 ± 12.38 | Female | 17.16 ± 7.45 [kg] |
WHS | 4.66 ± 1.34 | Muscle mass (BIA) | 22.43 ± 6.34 [kg] |
GDS | 12.06 ± 7.65 | Male | 23.05 ± 6.32 [kg] |
Zung anxiety | 34.46 ± 6.53 | Female | 22.03 ± 6.23 [kg] |
Corrected MMSE | 23.22 ± 5.11 | MNA | 12.41 ± 1.91 |
Algorithm | Clinician | Matching | FN | Sensitivity | Specificity | |
---|---|---|---|---|---|---|
Fall monitoring | 68% | 50% | 78% | 2% | 96% | 60% |
Cardiac monitoring | 84% | 56% | 64% | 4% | 93% | 27% |
Neurological visit | 22% | 26% | 88% | 8% | 69% | 95% |
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Brunzini, A.; Caragiuli, M.; Massera, C.; Mandolini, M. Healthy Ageing: A Decision-Support Algorithm for the Patient-Specific Assignment of ICT Devices and Services. Sensors 2023, 23, 1836. https://doi.org/10.3390/s23041836
Brunzini A, Caragiuli M, Massera C, Mandolini M. Healthy Ageing: A Decision-Support Algorithm for the Patient-Specific Assignment of ICT Devices and Services. Sensors. 2023; 23(4):1836. https://doi.org/10.3390/s23041836
Chicago/Turabian StyleBrunzini, Agnese, Manila Caragiuli, Chiara Massera, and Marco Mandolini. 2023. "Healthy Ageing: A Decision-Support Algorithm for the Patient-Specific Assignment of ICT Devices and Services" Sensors 23, no. 4: 1836. https://doi.org/10.3390/s23041836
APA StyleBrunzini, A., Caragiuli, M., Massera, C., & Mandolini, M. (2023). Healthy Ageing: A Decision-Support Algorithm for the Patient-Specific Assignment of ICT Devices and Services. Sensors, 23(4), 1836. https://doi.org/10.3390/s23041836