In-Home Evaluation of the Neo Care Artificial Intelligence Sound-Based Fall Detection System
Abstract
:1. Introduction
- What is the technical accuracy of the Neo in detecting events of concern, measured in terms of sensitivity and specificity?
- How effectively is the Neo system’s post-detection response also measured in terms of sensitivity and specificity?
2. Materials and Methods
2.1. Study Design
2.2. Context
2.3. Participants and Recruitment
2.4. Phase 1: In-Home Trial
2.4.1. Procedure
2.4.2. Data Management
- (i)
- Neo activated by a true event (fall or other event of concern);
- (ii)
- Neo activated by everyday sounds (i.e., Neo detected a sound that could indicate a potentially significant event, however a true event did not occur);
- (iii)
- Neo heard an everyday sound, and correctly determined that it was not significant, and so refrained from activating.
- (i)
- Correct alert: The Neo detected a potentially significant event, asked the user if they were ok, and correctly determined an alert was required (because the user responded that they were not ok);
- (ii)
- Correct no action: The Neo detected a potentially significant event, asked the user if they were ok, and correctly determined an alert was not required (because the user responded that they were ok);
- (iii)
- Incorrect alert: The Neo detected a potentially significant event, asked the user if they were ok, and incorrectly determined an alert was required (because the Neo either did not hear or did not understand the user’s response);
- (iv)
- Incorrect no action: The Neo detected a potentially significant event, asked the user if they were ok, and incorrectly determined no further action was required (because the user responded that they were not ok);
- (v)
- System error: The Neo detected a potentially significant event, but there was a system error resulting in a response failure (e.g., a looping response where the participant responded that they were ok, but the Neo asked again).
2.5. Analysis
2.6. Phase 2: User Experience
2.6.1. Procedure
2.6.2. Analysis
3. Results
3.1. Participant Characteristics
3.2. Phase 1: In-Home Trial
3.3. Phase 2: User Experience
3.4. Theme 1: Areas for Improvement
“I would suggest you probably have to come into an individual home and try and record and replicate those noises. So that it became specific to yours, to the person’s home, because there must be all sorts of other factors like how big the room is in which you make the noise or I’m sure there are lots of reasons why it would react to one noise in one house and not in another.” (NCTI117P1).
“This house has a lot of rooms. So, unless I’ve got one of those things everywhere [Neos], which means I’m going to have to have a lot of plugs everywhere.” (NCTI15P1).
Sub Theme 1: Additional Features
“I think that is a must. Anyone with a garden would want one.” (NCTI15).
“So, I guess it needs to be developed more to the sounds of somebody calling out for help.” (NCTI04P1).
“Making it more sensitive to people and not animals, you know?” (NCTI19CP1).
“It would be great if it was connected to your calendar on your phone so you don’t forget you’ve got an appointment with the doctor or you’ve got dinner or lunch today.” (NCTI13P1).
3.5. Theme 2: Challenges
3.5.1. Sub Theme 1: Neo Issues
“I was having to always tell it I’m ok. If you’ve got it going off 3, 4, 5 times in an hour you know, you’re going to pull it out the wall.” (NCTI28).
“If they were frustrated with it, I would worry that they would just find a way to unplug it.” (NCTF29).
“I can’t see the point of having something like that plugged into my wall in a room unless I’m in that room and something happens to me in that room.” (NCTI15).
3.5.2. Sub Theme 2: Technical Issues
“Sometimes we haven’t heard it for weeks and then all of a sudden, it starts up again.” (NCTI19).
“Well, sometimes the system [Neo] didn’t hear our response. It was saying, are you ok? We’d say yes, but we had to repeat it a few times for it to hear us.” (NCTI17P1).
3.5.3. Sub Theme 3: Responding to Everyday Sounds
“It was going off a lot whenever the dog would cry. It would say, I can hear crying. Are you ok? Which is great if I were crying, but it was the dog.” (NCTI28).
“I would be cutting vegetables or the microwave would beep and it would go off, I was usually in the middle of cooking so it was a little bit annoying.” (NCTI04P1).
3.5.4. Sub Theme 4: Missed Falls
“There were couple of times that he did have a fall and it didn’t respond. Well it was a bit disappointing, I suppose to think that was obviously one of the main reasons for it is that it’s an alarm for things like that. So that was, I guess, a bit disappointing.” (NCTI104P1).
3.5.5. Sub Theme 5: Tech Savvy
“You’re forgetting a lot of older people don’t like using phones, like me. I don’t like using phones and an extra app or something is daunting.” (NCTI24).
“I mean, apps and that, that’s the way it is these days. That’s what everyone does. So even the older generation generally have some sort of smartphone that would have an app on it.” (NCTF29).
3.6. Theme 3: Decisions to Acquire a Monitoring System
“I feel confident enough to not to need one. I’ve had a lot of incidents of falls around the property. It’s actually too dangerous for me really. But it’s mainly myself, it’s clumsiness on my behalf.” (NCTI19).
Sub Theme 1: Personal Experiences
“I wanted one because I had a friend, and she wouldn’t wear one and she died.” (NCTI24).
3.7. Theme 4: Future Use of the Neo
“Not at the moment because I think there’s still a bit to be sorted out. I think that down the track, if, if other things were incorporated, I think yes I would use it.” (NCTI04).
“Personally? At the moment, I would choose a watch because I’m a busy person. I’m in and out all day.” (NCTI19).
Sub Theme 1: Aged Care Facilities
“If they’re not checking on you all the time and if you fall over in the first 15 min, you are laying on the ground unconscious bleeding for four hours before someone finds you. The Neo would solve that problem.” (NCTI27P1).
3.8. Theme 5: Cost
“I think it’s an impossible question for us, because the reality is if we thought we needed a comprehensive system and it supplied that, then, you know, almost wouldn’t matter in a sense what it costs.” (NCTI17P1).
Sub Theme 1: Supported by Allied Health Providers
“If you get a specialist in and they say this is what you need for your safety, for your wellbeing, and for your continued independence—and there’s the keyword, independence—they’ll pay for just about anything because they want people to be at home.” (NCTI27P1).
3.9. Theme 6: Positive Anecdotes
“It was convenient. I mean, you didn’t have to carry it around with you and you didn’t have to wear it.” (NCTI19).
3.9.1. Sub Theme 1: A Sense of Security
“It made you feel more secure. Like a guardian angel just sort of watching over us. We just really enjoyed knowing that we had that.” (NCTI13).
3.9.2. Sub Theme 2: Recommending to Others
“People have got the necklaces, but they don’t always wear them. They’ll leave them in the bedroom or in the bathroom, they take them off to have a shower and then they forget to put them back on.” (NCTI04P1).
“As it is now? No, I wouldn’t. If it develops to a stage where it works, yes. I think it would be beneficial.” (NCTI27P1).
3.9.3. Sub Theme 3: Neo Compared to Other Systems
“He doesn’t really need a pendant at the moment. Only when I’m not here. So, probably the Neo one would be better. Because I don’t like wearing a pendant. I don’t like something around my neck like that” (NCTI13P1).
“The alarm system [Neo] I have now goes straight through to an ambulance. I would like to have one where I can ring up my family, instead to just get somebody to come in and say, well, look, I think you’ll be all right. That’s all you need when you get older.” (NCTI24).
4. Discussion
4.1. Strengths and Limitations
4.2. Clinical Implications and Future Directions
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Neo Activated by a True Fall (n = 9) | Neo Activated by Everyday Sounds (n = 4930) | Neo Detected an Everyday Sound and Refrained from Activating (n = 361) | Total Detected Sounds (n = 5300) | |
---|---|---|---|---|
Banging | 0 | 14 | 0 | 14 |
Something breaking | 0 | 2 | 0 | 2 |
Coughing | 0 | 0 | 105 | 105 |
Crying/ sobbing | 1 | 664 | 0 | 665 |
Fire alarm | 0 | 115 | 10 | 125 |
Glass breaking | 0 | 41 | 0 | 41 |
Groaning | 3 | 32 | 0 | 35 |
Screaming | 0 | 655 | 0 | 655 |
Shattering | 0 | 4 | 0 | 4 |
Shouting | 0 | 56 | 0 | 56 |
Slapping/ smacking | 2 | 1096 | 0 | 1098 |
Smoke detector | 0 | 579 | 112 | 691 |
Throat clearing | 0 | 0 | 134 | 134 |
Thump or thud | 1 | 669 | 0 | 670 |
Wail or moan | 1 | 96 | 0 | 97 |
Whimpering | 1 | 633 | 0 | 634 |
Yelling | 0 | 274 | 0 | 274 |
Response Outcome | Description | n (%) |
---|---|---|
Correct Alert | The Neo detected a potentially significant event, asked the user if they were ok, and correctly determined an alert was required (because the user responded that they were not ok). | 4 (0.1%) |
Correct No Action | Correct No action: The Neo detected a potentially significant event, asked the user if they were ok, and correctly determined an alert was not required (because the user responded that they were ok). | 1430 (29%) |
Incorrect Alert | The Neo detected a potentially significant event, asked the user if they were ok, and incorrectly determined an alert was required (because the Neo either did not hear or did not understand the user response). | 299 (6.1%) |
Incorrect No Action | The Neo detected a potentially significant event, asked the user if they were ok, and incorrectly determined no further action was required (because the user responded that they were not ok). | 1 (<0.1%) |
System Error | The Neo detected a potentially significant event, but there was a system error resulting in a response failure (e.g., a looping response where the participant responded that they were ok but the Neo asked again). | 3205 (64.9%) |
Neo’s Fall Detection, n= | Total, n= | ||
---|---|---|---|
Fall Status | Did Not Detect Fall | Detected Fall | |
No fall | 361 | 4930 | 5291 |
Fall | 3 | 9 | 12 |
Total | 364 | 4939 |
Neo’s Response 1, n= | Total, n= | ||
---|---|---|---|
Alert requirement | Inappropriate response | Appropriate response | |
Alert not required | 299 | 1430 | 1730 |
Alert required | 3 | 5 | 8 2 |
Total | 302 | 1436 |
Value (95% CI) | |
Fall detection Sensitivity Specificity | 75.00% (42.81% to 94.51%) 6.80% (6.16% to 7.54%) |
Fall response Sensitivity Specificity | 62.50% (24.49% to 91.48%) 17.28% (15.53% to 19.15%) |
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Maher, C.; Dankiw, K.A.; Singh, B.; Bogomolova, S.; Curtis, R.G. In-Home Evaluation of the Neo Care Artificial Intelligence Sound-Based Fall Detection System. Future Internet 2024, 16, 197. https://doi.org/10.3390/fi16060197
Maher C, Dankiw KA, Singh B, Bogomolova S, Curtis RG. In-Home Evaluation of the Neo Care Artificial Intelligence Sound-Based Fall Detection System. Future Internet. 2024; 16(6):197. https://doi.org/10.3390/fi16060197
Chicago/Turabian StyleMaher, Carol, Kylie A. Dankiw, Ben Singh, Svetlana Bogomolova, and Rachel G. Curtis. 2024. "In-Home Evaluation of the Neo Care Artificial Intelligence Sound-Based Fall Detection System" Future Internet 16, no. 6: 197. https://doi.org/10.3390/fi16060197
APA StyleMaher, C., Dankiw, K. A., Singh, B., Bogomolova, S., & Curtis, R. G. (2024). In-Home Evaluation of the Neo Care Artificial Intelligence Sound-Based Fall Detection System. Future Internet, 16(6), 197. https://doi.org/10.3390/fi16060197