| Literature DB >> 21612666 |
Vincent C C Cheng1, Josepha W M Tai, Sara K Y Ho, Jasper F W Chan, Kwan Ngai Hung, Pak Leung Ho, Kwok Yung Yuen.
Abstract
BACKGROUND: MedSense is an electronic hand hygiene compliance monitoring system that provides Infection Control Practitioners with continuous access to hand hygiene compliance information by monitoring Moments 1 and 4 of the WHO "My 5 Moments for Hand Hygiene" guidelines. Unlike previous electronic monitoring systems, MedSense operates in open cubicles with multiple beds and does not disrupt existing workflows.Entities:
Mesh:
Year: 2011 PMID: 21612666 PMCID: PMC3129590 DOI: 10.1186/1471-2334-11-151
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Figure 1MedSense devices including beacon and pump bottle sensor at the bedside.
Technical details of MedSense's information flow
| MedSense detects opportunities for hand hygiene in four steps: (i) badges detect "events" when the HCW moves in and out of patient zone; (ii) events are assigned a probability of patient contact based on duration; (iii) events with high probability of patient contact are split into "Before Touching a Patient" and "After Touching a Patient" hand hygiene indications; and (iv) isolated indications are counted as opportunities while "After Touching a Patient" indications followed by "Before Touching a Patient" indications in quick succession are combined into single opportunities. |
| The system defines an "event" as an interval when a badge-wearing HCW spent time in a patient zone within range of a Beacon installed on the wall at the head of the patient's bed. The Beacons, which focus their transmissions into an elliptical field around the bed, periodically broadcast, and the Badges receive these "pings" and record the patient zone ID and signal strength. The "Received Signal Strength Indication" (RSSI) of the ping functions as an indicator of distance between the two devices. During the technical phase of the trial, the Beacons were calibrated such that a patient zone extending approximately arm's length from the bed's perimeter could be detected by applying a threshold to the RSSI (Figure 6). A detection algorithm inputs these ping data points and calibration values and outputs a series of events defined by start and stop times together with the patient zone and badge ID. The algorithm uses a timeout of one minute where a badge may leave the patient zone and return while continuing the active event. |
| MedSense uses a predefined reference table to predict the probability of patient contact having occurred during an event. The table is indexed by event duration, and the corresponding probability value represents the probability of patient contact during the event. The table's values derive from the results of data observation on the unit, which showed a strong relationship between the duration spent in a patient zone and patient contact occurring. Figure 7 shows the probability of patient contact in relation to the event duration. Events with a low probability of patient contact (duration less than fifteen seconds) are disregarded, and the remaining events each create two indications for hand hygiene: "Before Touching a Patient" and "After Touching a Patient", which are assigned times equal to the start and end times of the events, respectively. In addition to type and time, the indications carry forward their probability of patient contact as a weighting factor to be used in the compliance calculation. |
| According to the WHO's recommendation, the occurrence of a single indication creates an opportunity for hand hygiene. MedSense therefore counts each isolated indication as an opportunity with probability of occurrence equal to the indication probability. When multiple indications occur at the same time, the WHO specifies that only a single opportunity should be counted. MedSense groups an "After Touching a Patient" followed by a "Before Touching a Patient" indication that happen within two minutes of each other as a single opportunity. When combining these two indications, the resulting opportunity has a probability equal to the probability that at least one of the two indications occurred. |
| Wireless sensors detect when HCWs dispense alcohol and soap product, and then broadcast an activation message to proximate badges, which record the messages. The action algorithm selects activation messages with strong signal strength and assigns them to badges as hand hygiene actions. |
| Pump bottle sensors accommodate a single alcohol or soap bottle. The sensors can be mounted on a wall or placed on a flat surface. When the HCW presses on a bottle's pump to dispense product, a force sensor module in the bottom of the unit triggers and broadcasts a message indicating that a pump bottle "activation" occurred. |
| Each badge that receives a particular activation message records the identifying information together with the time and RSSI. When this data is uploaded to the server, the action algorithm selects activations with an RSSI above a threshold as representing badges, and therefore HCWs, who could have initiated the hand hygiene action. When a single activation is selected for a particular action, the action algorithm directly assigns it to the corresponding badge. If multiple activations are selected, the algorithm assigns an action to each represented badge but with a flag marking them as uncertain. |
| The compliance algorithm calculates compliance from a set of opportunities and actions in three steps. The first step involves matching the actions to opportunities based on temporal proximity. In the second step, the algorithm filters out the opportunities matched to uncertain actions. Finally, the matched and unmatched opportunities feed into a calculation that determines the compliance. |
| The matching algorithm uses the following criteria to determine which actions match to which opportunities: (i) an action can only match to a single opportunity; (ii) multiple actions may match to the same opportunity; (iii) a matching action and opportunity must occur within 90 seconds of each other; and (iv) an action cannot match an opportunity if there is an intervening opportunity. The algorithm determines each match in order from shortest to longest time between action and opportunity. When an action marked as certain (from the action algorithm) matches to an opportunity, the algorithm removes the opportunity from the potential match set so that no additional actions may match it. The end result is three types of opportunities: (i) no action matched; (ii) certain action matched; (iii) one or more uncertain actions matched. Figure 8 illustrates the matching algorithm. |
| The subset of the opportunities matched to uncertain actions represents a case where the system did not have the discriminatory power to determine compliance behavior. To reduce error in the final compliance calculation, the compliance algorithm filters out these ambiguous data points. The remaining opportunities, those with certain actions or no action at all, are referred to as compliance data points. |
| MedSense defines the compliance as the conditional probability of an action given an opportunity, denoted P(A|O). P(A|O) is equivalent to the joint probability of action and opportunity divided by the marginal probability of an opportunity, or P(AO)/P(O). Since the algorithm has removed the uncertain actions, this calculation becomes a weighted average where the action outcomes (zero or one) are weighted by the opportunity probabilities. This compliance calculation can be performed over any subset of the compliance data points, as is the case when calculating a compliance for a window of time, a category of HCWs, or any other grouping variable. |
Figure 2Diagram of the trial unit showing the six patient beds with beacons behind them, eight alcohol dispensers instrumented with sensors, and four soap dispensers instrumented with sensors.
Figure 3Daily aggregate compliance and compliance data sample size shown over the course of the evaluation phase of the trial.
Opportunities observed during direct observation sessions according to "My 5 Moments for Hand Hygiene"
| Moment | First session | Second session | Third session | Fourth session | Total | Percent |
|---|---|---|---|---|---|---|
| Moment 1 | 8 | 9 | 10 | 13 | 40 | 49.3% |
| Moment 2 | 0 | 3 | 0 | 0 | 3 | 3.7% |
| Moment 3 | 2 | 1 | 3 | 2 | 8 | 9.8% |
| Moment 4 | 10 | 14 | 12 | 18 | 54 | 66.7% |
| Moment 5 | 0 | 0 | 4 | 4 | 8 | 9.8% |
| Opportunities | 14 | 21 | 18 | 28 | 81 | 100% |
The counts for the moments in the table are not mutually exclusive since an opportunity may represent more than one moment. For example, 69 of the 81 (85.2%) opportunities observed had at least one of Moments 1 and 4.
Figure 4Distribution of compliance according to different parameters. a. Distribution of compliance calculated for two-hour periods of the day for each day of the evaluation phase and grouped by time period. b. Distribution of compliance calculated per shift on a daily basis and grouped by shift. Note. AM, morning shift from 06:30 to 13:45; PM, afternoon shift from 13:45 to 20:45; Night; night shift from 20:45 to 06:30. c. Distribution of compliance calculated on a daily basis and grouped by day of the week. d. Hand hygiene performance of individual subjects during the entire study period. Note. N, registered nurse; NO, nursing officer; NS, registered nurse with shared badge.
Figure 5Distribution of compliance calculated per badge and grouped by subject's HCW category. Note. A single compliance is calculated per shared badge event though the subjects in these categories may change badges.
Review of literature on the use of electronic device in monitoring hand hygiene
| Study [reference] | Design, setting, and main intervention | Major outcome and remark |
|---|---|---|
| Swoboda SM | Prospective 14-month study in a 14-bed intermediate care unit, Baltimore, US; | Hand hygiene compliance in patient rooms improved by 37% during phase 2 and 41% in phase 3; while the number of infection decreased by 22% and 48% in the corresponding period; |
| Kinsella G | A 47-day study in a 16-bed ICU, Salford, UK; | Consumption of alcohol gel dispenser in bed area was correlated with the dependency of the patient (r = 0.5, p < 0.01); |
| Venkatesh AK | Prospective 1-month study in a 30-bed hematopoietic stem cell transplantation & hematology unit, Chicago, US; | Improved compliance of hand hygiene from baseline (36.3%) to 70.1% during phase 2; |
| Marra AR | A 6-month control trial in two 20-bed step-down units, Sao Paulo, Brazil; | No significant difference in the amount of alcohol gel used and hand hygiene compliance; |
| Boscart VM | Descriptive study in teaching facilities, Ontario, Canada; | All ten staff accept the use of the electronic device; |
| Boyce JM | Prospective observation trial for 6-month in a 22-bed general medical ward and a 15-bed surgical ICU, New Haven, US; | The dispenser located in patient rooms account for 47% and 36% of hand hygiene events performed in surgical ICU and general medical ward respectively; |
| Sahud AG | A 2-phase pilot study in 5 patient care units of a territory hospital, Pittsburgh, US; | Electronic device captured 98% of manually recorded room entries and 95% of dispensing event; |
| Edmond MB | A 2-phase study in a 35-bed orthopedic ward, | Compliance of hand hygiene among nursing staff increased from 73% in phase 1 to 93% in phase 2 (p = 0.01) |
| Polgreen PM | Description of an electronic device of small credit-card-sized without radio-frequency identification to monitor the use of hand hygiene dispensers before healthcare workers enter or exit patient rooms | No clinical data being mentioned |
ICU, intensive care unit