Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 4 de 4
Filter
1.
J Med Internet Res ; 24(2): e23355, 2022 02 16.
Article in English | MEDLINE | ID: mdl-35171102

ABSTRACT

BACKGROUND: Prior literature suggests that alert dismissal could be linked to physicians' habits and automaticity. The evidence for this perspective has been mainly observational data. This study uses log data from an electronic medical records system to empirically validate this perspective. OBJECTIVE: We seek to quantify the association between habit and alert dismissal in physicians. METHODS: We conducted a retrospective analysis using the log data comprising 66,049 alerts generated from hospitalized patients in a hospital from March 2017 to December 2018. We analyzed 1152 physicians exposed to a specific clinical support alert triggered in a hospital's electronic medical record system to estimate the extent to which the physicians' habit strength, which had been developed from habitual learning, impacted their propensity toward alert dismissal. We further examined the association between a physician's habit strength and their subsequent incidences of alert dismissal. Additionally, we recorded the time taken by the physician to respond to the alert and collected data on other clinical and environmental factors related to the alerts as covariates for the analysis. RESULTS: We found that a physician's prior dismissal of alerts leads to their increased habit strength to dismiss alerts. Furthermore, a physician's habit strength to dismiss alerts was found to be positively associated with incidences of subsequent alert dismissals after their initial alert dismissal. Alert dismissal due to habitual learning was also found to be pervasive across all physician ranks, from junior interns to senior attending specialists. Further, the dismissal of alerts had been observed to typically occur after a very short processing time. Our study found that 72.5% of alerts were dismissed in under 3 seconds after the alert appeared, and 13.2% of all alerts were dismissed in under 1 second after the alert appeared. We found empirical support that habitual dismissal is one of the key factors associated with alert dismissal. We also found that habitual dismissal of alerts is self-reinforcing, which suggests significant challenges in disrupting or changing alert dismissal habits once they are formed. CONCLUSIONS: Habitual tendencies are associated with the dismissal of alerts. This relationship is pervasive across all levels of physician rank and experience, and the effect is self-reinforcing.


Subject(s)
Decision Support Systems, Clinical , Medical Order Entry Systems , Physicians , Cohort Studies , Electronic Health Records , Habits , Humans , Retrospective Studies
2.
J Med Internet Res ; 23(10): e26486, 2021 10 19.
Article in English | MEDLINE | ID: mdl-34665149

ABSTRACT

BACKGROUND: Prior literature suggests that psychosocial factors adversely impact health and health care utilization outcomes. However, psychosocial factors are typically not captured by the structured data in electronic medical records (EMRs) but are rather recorded as free text in different types of clinical notes. OBJECTIVE: We here propose a text-mining approach to analyze EMRs to identify older adults with key psychosocial factors that predict adverse health care utilization outcomes, measured by 30-day readmission. The psychological factors were appended to the LACE (Length of stay, Acuity of the admission, Comorbidity of the patient, and Emergency department use) Index for Readmission to improve the prediction of readmission risk. METHODS: We performed a retrospective analysis using EMR notes of 43,216 hospitalization encounters in a hospital from January 1, 2017 to February 28, 2019. The mean age of the cohort was 67.51 years (SD 15.87), the mean length of stay was 5.57 days (SD 10.41), and the mean intensive care unit stay was 5% (SD 22%). We employed text-mining techniques to extract psychosocial topics that are representative of these patients and tested the utility of these topics in predicting 30-day hospital readmission beyond the predictive value of the LACE Index for Readmission. RESULTS: The added text-mined factors improved the area under the receiver operating characteristic curve of the readmission prediction by 8.46% for geriatric patients, 6.99% for the general hospital population, and 6.64% for frequent admitters. Medical social workers and case managers captured more of the psychosocial text topics than physicians. CONCLUSIONS: The results of this study demonstrate the feasibility of extracting psychosocial factors from EMR clinical notes and the value of these notes in improving readmission risk prediction. Psychosocial profiles of patients can be curated and quantified from text mining clinical notes and these profiles can be successfully applied to artificial intelligence models to improve readmission risk prediction.


Subject(s)
Artificial Intelligence , Patient Readmission , Aged , Data Mining , Humans , Length of Stay , Retrospective Studies , Risk Factors
3.
Nat Commun ; 12(1): 711, 2021 01 29.
Article in English | MEDLINE | ID: mdl-33514699

ABSTRACT

Sepsis is a leading cause of death in hospitals. Early prediction and diagnosis of sepsis, which is critical in reducing mortality, is challenging as many of its signs and symptoms are similar to other less critical conditions. We develop an artificial intelligence algorithm, SERA algorithm, which uses both structured data and unstructured clinical notes to predict and diagnose sepsis. We test this algorithm with independent, clinical notes and achieve high predictive accuracy 12 hours before the onset of sepsis (AUC 0.94, sensitivity 0.87 and specificity 0.87). We compare the SERA algorithm against physician predictions and show the algorithm's potential to increase the early detection of sepsis by up to 32% and reduce false positives by up to 17%. Mining unstructured clinical notes is shown to improve the algorithm's accuracy compared to using only clinical measures for early warning 12 to 48 hours before the onset of sepsis.


Subject(s)
Clinical Decision Rules , Data Mining/methods , Electronic Health Records/statistics & numerical data , Machine Learning , Sepsis/diagnosis , Early Diagnosis , Feasibility Studies , Humans , Intensive Care Units/statistics & numerical data , Predictive Value of Tests , Prevalence , ROC Curve , Risk Assessment , Sepsis/epidemiology , Severity of Illness Index , Time Factors
4.
Health Syst (Basingstoke) ; 9(4): 285-292, 2019 Mar 21.
Article in English | MEDLINE | ID: mdl-33354321

ABSTRACT

Our study analyzed the economicimpact of a telegeriatrics programme on care of nursing homeresidents, from the healthcare system provider's perspective. Thisis a retrospective, archival data analysis of multiple data sourcesin 4 nursing homes of Singapore from 2010 to 2015. Individualsadmitted to nursing homes and have undergone telemedicineconsultations (N=859) from 2010 to 2015 were recruited. Weconducted a cost analysis of the programme by reviewing pasthospital admissions' and specialist outpatient clinic (SOC) visits'billing records, nurse training records, and key performanceindicators' reports. A significant relationship was observed betweenteleconsultations and SOC visit cost (ß1 = -83.366, p-value<0.01) and between teleconsultations and inpatient cost (ß1 =-470.971, p-value <0.05). Remote video consultations could reduceunnecessary SOC visits and hospital admissions, and thereforelead to cost savings. Training of nursing home nurses couldtranslate to cost savings as a result of decreased ED transfers.

SELECTION OF CITATIONS
SEARCH DETAIL
...