Development of a Sensor to Measure Physician Consultation Times
Abstract
:1. Introduction
- (a)
- Self-reported means that a member of the healthcare staff (mostly the treating physician) answered a survey or provided a collection of duration times. These self-reported figures can, however, be categorised as biased.
- (b)
- Video means that a video recording of the activities in the treatment room were evaluated. This approach needs the patient’s recruitment and consent and is highly problematic regarding the General Data Protection Regulation (GDPR).
- (c)
- Audio recordings are used to verify the duration of patient–physician interactions; however, similarly to the video method, audio recordings are problematic regarding GDPR.
- (d)
- As part of the stopwatch method, a member of the healthcare staff (mostly the treating physician) timed the consultation period. This method is more reliable, as the net results can be evaluated. However, a comparison to gross results is not possible.
- (e)
- A short message (SMS) is sent by a member of the healthcare staff or the physician to a certain phone number, deriving the consultation duration time from the received message.
- (f)
- World Health Organisation/International Network for the Rational Use of Drugs (WHO/INRUD) means using data provided by the drug use indicators for health facilities, which contain a set of patient care indicators including the average consultation time. The number is evaluated by “dividing the total time for a series of consultations by the number of consultations”.
- (g)
- Calculation means that certain time parameters were collected and average consultation duration times were derived. Most of the data sets used to do the calculations cannot be verified.
2. Materials and Methods
2.1. Overview and Objectives
2.2. Combination of the Sensors
2.3. Prototype Development
3. Results
3.1. Single Door
3.2. Multi Door and Room Set-Up
4. Discussion
5. Conclusions
Notation
d | distance sensor to opposing wall (mm) |
index numbering of detected events at the door (-) | |
index numbering the loops (-) | |
measured value of the ToF sensor (mm) | |
difference (mm) | |
t | time (sec) |
time step (sec) | |
change (Person) | |
R | persons in the room (Person) |
D | door |
DS | door sensor |
GDPR | General Data Protection Regulation |
INRUD | International Network for the Rational Use of Drugs |
MD | motion detector |
PIR | passive infrared sensor |
ToF | Time of Flight |
WHO | World Health Organisation |
Author Contributions
Funding
Conflicts of Interest
References
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ToF | DS | MD | Conclusion Event | |
---|---|---|---|---|
mD | o + c | mD | ±1 | incoming or outgoing person |
mD | O | mD | ±1 | incoming or outgoing person (open door) |
mD | o + c | nD | ±1 | incoming or outgoing person (MD error) |
mD | O | nD | ±1 | incoming or outgoing person (MD error) |
mD | C | mD | 0 | passing by inside * or error |
nD | O or C | mD | 0 | passing by outside * or error |
nD | c | mD | 0 | door closed only (typical for automatic door closer) |
nD | o | mD | 0 | door is opend but nobody comes in |
nD | o + c | nD | 0 | error DS |
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Gabl, R.; Stummer, F. Development of a Sensor to Measure Physician Consultation Times. Sensors 2019, 19, 5359. https://doi.org/10.3390/s19245359
Gabl R, Stummer F. Development of a Sensor to Measure Physician Consultation Times. Sensors. 2019; 19(24):5359. https://doi.org/10.3390/s19245359
Chicago/Turabian StyleGabl, Roman, and Florian Stummer. 2019. "Development of a Sensor to Measure Physician Consultation Times" Sensors 19, no. 24: 5359. https://doi.org/10.3390/s19245359
APA StyleGabl, R., & Stummer, F. (2019). Development of a Sensor to Measure Physician Consultation Times. Sensors, 19(24), 5359. https://doi.org/10.3390/s19245359