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1 EHR audit log data can provide insights into strategies
2 EHR data from a large health care database spanning 15 y
3 EHR data on more than 112,000 participants from 34 sites
4 EHR documentation consists largely of imported text, is
5 EHR identified 472 IE discharges (430 of these were capt
6 EHR review of 342 G+ individuals predicted to have 1 MCV
7 EHR-AF (C index, 0.808 [95% CI, 0.807-0.809]) demonstrat
8 EHR-AF demonstrates predictive accuracy for incident AF
12 ly validated an electronic health record AF (EHR-AF) score in IBM Explorys Life Sciences, a multi-ins
15 ularities and dependencies in the aggregated EHRs of about 700,000 patients from the Mount Sinai data
19 otechnical changes were made to implement an EHR-related intervention to improve patient safety, why
20 were randomly assigned in a 1:1 ratio to an EHR configuration limiting to 1 patient record open at a
22 time with patients during office visits, and EHR use requires a substantial portion of that time.
23 ted death determined from automated data and EHRs; and (5) recurrent HZ identified from a cohort init
24 de the natural integration of PSEVs into any EHR machine-learning platform, provide a key step toward
27 poor medication adherence than an automated EHR pull alone but was limited by the small number of pa
29 models showed a positive association between EHR use and billing level and a negative association bet
34 ethods investments that are needed to curate EHR data toward research quality and to integrate comple
36 ataset containing statistically deidentified EHR data for over 21 million individuals (Explorys Datas
41 h played a critical role in developing early EHR prototypes and demonstrating their value to justify
42 asks involving different modalities (ECG/EEG/EHR), required level of characterization (abnormality de
47 orkflow within the Epic system, the existing EHR system of Parkland Health and Hospital System (Dalla
48 to be essential in the next phase: expanding EHR-based interventions and maximizing their role in cre
51 enables reporting of patient safety-focused EHR-based interventions while accounting for the multifa
53 ses a methodological reporting framework for EHR interventions targeting patient safety and builds on
59 ated clinic workflow timings calculated from EHR timestamps and the simulation models based on them w
60 n physician examination time calculated from EHR timestamps was 13.8+/-8.2 minutes and was not statis
61 potential predictors of HIV risk drawn from EHR data from 2007-15 at Atrius Health, an ambulatory gr
63 raction of ophthalmic surgical outcomes from EHR to answer key clinical questions on a large scale.
64 general-purpose patient representation from EHR data that facilitates clinical predictive modeling.
65 Simulation models based on big data from EHRs can test clinic changes before real-life implementa
66 ETTING, AND PARTICIPANTS: Clinical data from EHRs were linked with CGP results for 28 998 patients fr
72 y 41% of hospitals in the United States have EHR from outside providers or sources when treating a pa
73 S information from a large mental healthcare EHR data resource at the South London and Maudsley NHS F
74 plex symptomatic data from mental healthcare EHRs using NLP to facilitate further analyses of these c
75 nt was associated with decreased after-hours EHR use in a cohort of 139 academic ophthalmologists.
78 re (65,720) and from discoveries reported in EHR analysis studies (only 10, manually extracted); and
80 es and patient characteristics documented in EHRs of a large healthcare network over the last two dec
81 lity improvement and safety interventions in EHRs is still conducted at a single site, in a single EH
82 occurrence of diagnoses and prescriptions in EHRs as a third-order tensor, and decomposed it using th
86 However, extending analyses to incorporate EHR and biobank-based analyses will require careful cons
93 ommon data model (CDM) could accelerate more EHR-based research by making the data more accessible to
95 linician consensus review of 2,700 narrative EHR notes (from 520 patients), supplemented by state dea
97 ) systems can be configured to deliver novel EHR interventions that influence clinical decision makin
98 ease of 1.7 minutes (95% CI, -4.3 to 1.0) of EHR use time per encounter for ophthalmologists with hig
99 is article describes 4 potential benefits of EHR-based research: improving clinical decisions, suppor
101 hat interfaces with a relational database of EHR data in the Observational Medical Outcomes Partnersh
102 rves to inform how to coevolve the design of EHR systems and organizational decisions about processes
104 s clinical settings and the establishment of EHR-linked population-based biobanks provide unprecedent
106 tion, effectiveness, and generalizability of EHR-based interventions needed to effectively reduce pre
109 tual factors that may affect the outcomes of EHR implementations, such as attitudes toward implementa
113 es, and opportunities for standardization of EHR interventions in multisite studies and describes fle
114 e innovation lifecycle, multisite studies of EHR interventions are critical for generalizability.
116 erations for reporting on flexible trials of EHR interventions, including sharing details of the proc
117 tentional weight loss of at least 5%, use of EHR tools plus coaching resulted in less weight regain t
121 of eligible professionals attesting to MU of EHRs. Ophthalmologists were more likely to remain in the
122 research is needed to fulfill the promise of EHRs to not only store information but also support the
123 determined from automated data and review of EHRs; (5) Recurrent HZ identified from a cohort initiall
127 y ophthalmologists directly with patients on EHR use, conversation, and examination as well as total
129 (27% of the examination time) were spent on EHR use, 4.7 (4.2) minutes (42%) on conversation, and 3.
132 the goal to optimize the workflow within our EHR, improve operative room metrics and user satisfactio
133 nal DTI prediction and large-scale patients' EHRs-based clinical corroboration has high potential in
135 e the effect of an electronic health record (EHR) alert on chronic hepatitis B (CHB) screening among
136 oped and tested an electronic health record (EHR) algorithm to identify children with glomerular dise
138 Large-scale use of electronic health record (EHR) data can help to understand phenotypes in a scalabl
139 ective analysis of electronic health record (EHR) data from 50,515 adult primary care patients was co
141 e second leveraged electronic health record (EHR) data from the Vanderbilt University Medical Center
142 notype analyses on Electronic Health Record (EHR) data have recently drawn benefits across many areas
143 ome sequencing and electronic health record (EHR) data of 50,726 individuals were used to assess the
146 interest in using electronic health record (EHR) data to assess quality of care, the accuracy of suc
147 This study uses electronic health record (EHR) data to evaluate differences in central line-associ
148 lgorithm that uses electronic health record (EHR) data to identify individuals at increased risk for
149 computer science, electronic health record (EHR) data, and more affordable high-throughput genomics,
150 extracted from the Electronic Health Record (EHR) database of 150 patients to characterize the lung t
151 study, we combined electronic health record (EHR) derived phenotypes and genotype information to cond
152 modeling into the electronic health record (EHR) has been challenging, as complex models increase th
153 e interrogated the electronic health record (EHR) information of >1.3 million adults from the Geising
154 from unstructured electronic health record (EHR) provider notes is integral to advancing precision m
155 n the CHOP unified electronic health record (EHR) system (July 1, 2010, to June 30, 2014) were select
161 monly available in electronic health record (EHR) systems, can be used to predict patients' future ri
162 ied the sources of electronic health record (EHR) text documentation in ophthalmology progress notes.
163 ds displayed in an electronic health record (EHR) to 1 at a time, although little evidence supports t
164 odification of the electronic health record (EHR) to include FBSE as a recommended preventive service
165 data from hospital Electronic Health Record (EHR) to State Uniform Hospital Discharge Data Set (UHDDS
169 icant predictor of electronic health record (EHR)-based estimates of 10-year survival probability in
171 he availability of electronic health record (EHR)-based phenotypes allows for genome-wide association
172 largest PheWASs on electronic health record (EHR)-derived phenotypes across 38,682 unrelated samples
173 By contrasting Electronic Health Record (EHR)-derived symptoms of COVID-19-positive (COVID(pos);
174 to BioVU, a large electronic health record (EHR)-linked biobank at Vanderbilt University Medical Cen
176 e phenotypes from electronic health records (EHR) and genotypes across millions of individuals, this
178 unt values in the electronic health records (EHR) of 45 068 patients with idiopathic pulmonary fibros
180 duction model for electronic health records (EHR), capable of simultaneously predicting the likelihoo
181 measurements and electronic health records (EHR), manual interpretation for differential diagnosis h
182 pread adoption of electronic health records (EHRs) and a transition from mostly locally developed EHR
185 Increasingly, electronic health records (EHRs) are being linked to patient genetic data in bioban
189 wide adoption of electronic health records (EHRs) by ophthalmologists, there are widespread concerns
191 -control study of electronic health records (EHRs) data of 73,099,850 unique patients, of whom 12,030
193 ng lncRNAs and/or electronic health records (EHRs) from clinically diagnosed PTB patients and non-TB
194 or sites such as electronic health records (EHRs) from multiple healthcare systems and have drawn in
195 Wide adoption of electronic health records (EHRs) has raised the expectation that data obtained duri
198 portals to access electronic health records (EHRs) in the United States, but only 15% to 30% of patie
199 le abstraction of electronic health records (EHRs) of 600 incident patients 2011-2015; (3) HZ-related
200 le abstraction of electronic health records (EHRs) of 600 incident patients from 2011-2015; (3) HZ-re
201 and diseases and electronic health records (EHRs) of 72 million patients, we developed a novel integ
202 bridge this gap, Electronic Health Records (EHRs) of individual patients are connected to a heteroge
203 ion from paper to electronic health records (EHRs) over the past decade has been characterized by pro
204 (NLP) applied to Electronic Health Records (EHRs) presents an opportunity to create large datasets t
206 s within existing electronic health records (EHRs) should be the standard for large health care organ
207 ata captured from electronic health records (EHRs) to address pressing medical questions, but gaps re
208 iders spend using electronic health records (EHRs) to support the care delivery process is a concern
210 cal data, such as Electronic Health Records (EHRs), and in this case, may either correspond to new kn
211 ioVU) with linked electronic health records (EHRs), including Illumina Expanded Multi-Ethnic Global A
212 h questionnaires, electronic health records (EHRs), physical measurements, the use of digital health
215 H (which involves electronic health records [EHRs] plus organizational changes) from those of EHRs al
218 data from a large health care organization's EHR between 2000 and 2013, we determined the prevalence
219 physician and hospital do not share the same EHR. Information blocking, now prohibited by federal law
222 2016, and December 31, 2018, using secondary EHR data and a follow-up manual review of a random sampl
224 am) incorporated these three lncRNAs and six EHRs (age, hemoglobin, weight loss, low-grade fever, cal
226 als predicted to have 1 MCVD with sufficient EHR data revealed that 52 had been given the relevant cl
230 owever, physicians have raised concerns that EHR time requirements have negatively affected their pro
231 and reporting CDS studies to: 1) ensure that EHR data to inform the CDS are available; 2) choose deci
239 imates between the ARIC risk factors and the EHR IHD were modestly linearly correlated with hazards r
240 rted poor adherence was compared between the EHR extraction and text parsing identification using a F
244 t parsing tool that abstracted data from the EHR was used to search for combinations of the following
247 imization users agreed to proficiency in the EHR system, this improved to 70% post-optimization.
249 documented by the treating physician in the EHR), and clinical benefit rate (fraction of patients wi
251 enome-wide association study (PheWAS) in the EHR-linked BioVU biobank, we show that reduced genetical
253 may lend itself well to integration into the EHR without sacrificing the performance seen in more com
254 y computational assessment components of the EHR intervention, such as a predictive algorithm used to
255 analyzing the full phenotypic breadth of the EHR, computerized risk screening approaches may enhance
257 r studying food allergy, suggesting that the EHR's allergy module has the potential to be used for cl
259 ther an informatics algorithm applied to the EHR could electronically identify patients with AERD.
263 al ophthalmologist spent 3.7 hours using the EHR for a full day of clinic: 2.1 hours during examinati
264 of use, providers spend more time using the EHR for an office visit, generate longer notes, and clos
265 ) total ophthalmologist time spent using the EHR was 10.8 (5.0) minutes per encounter (range, 5.8-28.
267 ment of automated risk prediction within the EHR based on systemic data to assist with clinical decis
270 loped an informatics algorithm to search the EHRs of patients aged 18 years and older from the Partne
271 inherited lipodystrophies and examined their EHR for comorbidities associated with lipodystrophy.
272 g higher rates of patient engagement through EHR portals will require paying more attention to the ne
277 on) is currently one of the most widely used EHR system in the United States, and development of a su
280 se 1.85 using CHA(2)DS(2)-VASc to 2.88 using EHR-AF), stroke (1.61 using C(2)HEST to 1.92 using CHARG
281 f 1 pediatric ophthalmologist's clinic using EHR timestamp data, which was used to develop a scheduli
282 n subgroup analyses, AF discrimination using EHR-AF was lower in individuals with stroke (C index, 0.
284 Lastly, it presents an approach for using EHR data and clinical prediction to generate quantitativ
286 l also apply to observational research using EHR data, and these are well addressed in prior literatu
287 ated with each individual office visit using EHR audit logs and determined chart closure times and pr
289 6 minutes and 14 seconds per encounter using EHRs, with chart review (33%), documentation (24%), and
291 o examine how the amount of time spent using EHRs as well as related documentation behaviors changed
294 to integrate complementary data sources when EHR data alone are insufficient for research goals.
295 xible software that interfaces directly with EHR data structured around a common data model (CDM) cou
296 r future research on patient engagement with EHR data through patient portals, These studies mostly i
298 study to apply machine learning models with EHRs to predict GDM, which will facilitate personalized
300 illustrate potential biases inherent within EHR analyses, how these may be compounded across time an