コーパス検索結果 (1語後でソート)
通し番号をクリックするとPubMedの該当ページを表示します
1 measures in the model and adding historical claims data.
2 iagnosed by serial study ECGs or by Medicare claims data.
3 ords, study electrocardiograms, and Medicare claims data.
4 between 2005 and 2014, using administrative claims data.
5 edications was obtained from Medicare Part D claims data.
6 o December 31, 2010 using commercial insurer claims data.
7 tion and linked these patients with Medicare claims data.
8 een 2009 and 2015 derived from 100% Medicare claims data.
9 sing clinical registry versus administrative claims data.
10 ent Database together with VA administrative claims data.
11 went colorectal surgery using administrative claims data.
12 osis codes, death certificates, and Medicare claims data.
13 egistry linked with Medicare fee-for-service claims data.
14 with sickle cell anemia using administrative claims data.
15 l infarction (AMI) for which we had complete claims data.
16 are & Medicaid Services (CMS) administrative claims data.
17 to identify high-risk surgical procedures in claims data.
18 e Centers for Medicare and Medicaid Services claims data.
19 rumoxytol as reported in outpatient Medicare claims data.
20 of HDV in the United States using real-world claims data.
21 lyses from medical records or administrative claims data.
22 adjustment was limited to that available in claims data.
23 and actionable cohorts using linked Medicare claims data.
24 osclerotic CVD events identified in Medicare claims data.
25 cases and interventions were identified from claims data.
26 and End Results registry linked to Medicare claims data.
27 udinal Centers for Medicare & Medicaid (CMS) claims data.
28 between 2004 and 2008 and linked to Medicare claims data.
29 over 6-month rolling windows, using pharmacy claims data.
30 ident from prevalent cases identified in the claims data.
31 data had a higher specificity than all-payer claims data.
32 ospitals were linked with Medicare inpatient claims data.
33 media reports, and 9 (20%) from catastrophic claims data.
34 in pharmacoepidemiologic studies relying on claims data.
35 l and febuxostat: a study using the Medicare claims data.
36 performance metric with the use of Medicare claims data.
37 ipant report, electronic health records, and claims data.
38 013-2017 Mississippi Medicaid administrative claims data.
39 trols aged > 65 years in 2009 using Medicare claims data.
41 , observational study using health insurance claims data (1997-2013: Medicaid) from Florida, Iowa, Ka
46 Oncology Group clinical records to Medicare claims data according to Social Security number, sex, an
48 ence to general guidance on the reporting of claims data analyses, as outlined in this article, is im
50 network of human diseases using large-scale claims data and analyze the associations between diagnos
52 I) participants aged >/=65 years to Medicare claims data and compared hospitalizations that had diagn
54 Here we model high-volume city-level medical claims data and human mobility proxies to explore the dr
55 tive cohort study, we used national Medicare claims data and identified patients undergoing bariatric
56 for Medicare and Medicaid Services inpatient claims data and International Classification of Diseases
57 light the limitations of using only Medicare claims data and suggest that population-based cohorts ma
58 ertain clinical parameters in administrative claims data and the inability to evaluate surrogate outc
60 CathPCI Registry linked with administrative claims data, and validated using comparable 2005 data.
69 We analyzed Medicare fee-for-service paid claims data between 1994-2012 to determine the number of
71 We then examine how large-volume medical claims data can, with great spatiotemporal resolution, h
74 This study linking diagnoses from EHRs to claims data collected valid information on PAR managemen
78 ssion diagnosis listed in the administrative claims data differed from the clinical diagnosis in 97 r
80 set linking transplant registry and Medicare claims data for 12,803 liver transplant recipients was d
81 ant registry, pharmacy records, and Medicare claims data for 16 308 kidney transplant recipients tran
84 (SEER) -Medicare linked databases to analyze claims data for 202,299 patients dying as a result of lu
85 PCI Registry data with longitudinal Medicare claims data for 250 350 patients undergoing PCI from 200
87 rollment and nationwide MarketScan insurance claims data for 678220 privately insured patients receiv
89 s between 1996 and 2006 using enrollment and claims data for a 5% national sample of Medicare benefic
90 G, AND PATIENTS: A retrospective analysis of claims data for a 5% representative sample of Medicare f
91 pective analysis of Medicare fee-for-service claims data for adults admitted for ischemic stroke from
92 United States Renal Data Systems patient and claims data for all adult renal transplant recipients be
93 id Analytic Extract database, which includes claims data for all children enrolled in Medicaid throug
98 performed a retrospective cohort analysis of claims data for Medicaid beneficiaries, aged 18 to 64 ye
99 HSS to a hospital 30-day risk model based on claims data for Medicare beneficiaries with acute ischem
101 ata Warehouse, which includes administrative claims data for over 100 million commercially insured an
104 y was to demonstrate the utility of Medicaid claims data for providing statewide estimates of asthma
105 Clinical data have greater validity than claims data for quality measurement but can be burdensom
108 corresponding hazard ratios based solely on claims data for the same hormone trial participants.
110 rvational cohort study, using administrative claims data from 14 commercial health care plans coverin
118 lorectal cancer using Medicare Parts A and B claims data from 1999 to 2009; the analysis was conducte
119 Using U.S. national Medicaid administrative claims data from 2000 through 2005, we identified a coho
121 tients with cancer were captured in Medicare claims data from 2005 through 2009 nationally and assess
130 ve cohort study was conducted using Medicaid claims data from 4 geographically diverse, large states
132 pective analysis of fee-for-service Medicare claims data from 761 acute care hospitals providing inpa
135 rospective, observational cohort study using claims data from a 20% random sample of 2005-2008 Medica
139 This was a retrospective cohort study using claims data from a 5% random sample of Medicare benefici
143 ive cohort study was conducted using medical claims data from a large national US insurer (N = 4,387,
144 AND PARTICIPANTS: Retrospective analysis of claims data from a large US commercial insurer, represen
147 2012 and December 2017 using administrative-claims data from across the United States (accessed thro
148 We performed a case-control study using claims data from all nonfederal emergency departments an
149 A retrospective cohort study using medical claims data from ambulatory care centers across the Unit
150 e cohort study using enhanced administrative claims data from approximately 20% of patients hospitali
152 d a retrospective analysis of administrative claims data from community hospital and postdischarge am
153 s retrospective, inception cohort study used claims data from fee-for-service Medicare beneficiaries
154 statin with temperature dependence, by using claims data from five US Medicaid programs supplemented
155 rospective cohort study using administrative claims data from January 1, 2006 to December 31, 2015.
156 or inflammatory bowel disease using Medicare claims data from January 1, 2006, through December 31, 2
157 tudy using inpatient and outpatient Medicare claims data from January 1, 2008, through December 31, 2
159 andardized health care costs from commercial claims data from January 2005 to June 2009, including to
160 alysis of publicly available Medicare Part B claims data from January 2012 to December 2014 includes
161 study was performed by using fee-for-service claims data from Medicare and a commercial carrier (Blue
166 trospective cohort study using U.S. Medicare claims data from patients undergoing pulmonary artery pr
171 es only in the primary position for Medicare claims data from the Center for Medicare & Medicaid Serv
172 ntific Registry of Transplant Recipients and claims data from the Centers for Medicare and Medicaid S
173 nd the STS Adult Cardiac Surgery Database to claims data from the Centers for Medicare and Medicaid S
174 rospective, cross-sectional study using 2011 claims data from the largest Minnesota health plan.
175 was a retrospective study of administrative claims data from the MarketScan Commercial and Medicare
176 rticipants: Retrospective cohort study using claims data from the Medicare Provider Analysis and Revi
177 A retrospective population-based study using claims data from the National Health Insurance Research
178 tion-based case-control design using medical claims data from the National Health Insurance Research
179 vey who were linked to the 2009 through 2013 claims data from the National Health Insurance system.
180 ropensity-matched study using administrative claims data from the OptumLabs Data Warehouse of private
181 is retrospective study, using administrative claims data from the OptumLabs Data Warehouse, we identi
182 pective cohort analysis utilizing healthcare claims data from the period 2007-2010 to compare rates o
183 nd effect-estimate precision using insurance claims data from the Pharmaceutical Assistance Contract
184 nd effect estimate precision using insurance claims data from the Pharmaceutical Assistance Contract
185 lthcare payer perspective, we used insurance claims data from the Truven Health MarketScan 2014 Resea
186 ive cohort study and analyzed administrative claims data from Truven Health Analytics MarketScan Rese
187 011-2017 in US adults aged >=60 years, using claims data from Truven Health MarketScan Research Datab
189 etrospective longitudinal cohort analysis of claims data from women 50 years or older enrolled in a U
192 a to risk-adjust complications identified by claims data had routinely poor agreement with all clinic
193 ratio, 0.84 [95% CI, 0.65-1.09]; P=0.33) and claims data (hazard ratio, 0.86 [95% CI, 0.66-1.11]; P=0
194 % for TAVR and 12.5% for SAVR patients using claims data (hazard ratio, 1.02 [95% CI, 0.73-1.41]; P=0
195 armacy sales), and the MarketScan Commercial Claims data (healthcare use) for 75 designated market ar
197 ries 66-90 years of age from the 5% Medicare claims data in 2000 (n = 1,137,311) and tracked each sub
201 At 60 months, product-specific analyses of claims data indicated that between 34.6% and 55.4% of pa
202 ucted using Missouri Medicaid administrative claims data (January 1, 2010, to December 31, 2012) link
204 etween 2002 and 2013 using Vizient inpatient claims data linked to the United Network for Organ Shari
212 Retrospective analysis of administrative claims data of patients discharged following a major sur
215 Retrospective analysis of health insurance claims data of two large Swiss basic health insurance pl
217 rospective cohort study using administrative claims data on patients hospitalized for surgery (as def
218 between clinical registry and administrative claims data on the occurrence of postoperative complicat
220 ross-sectional, drawn from administrative or claims data, or based on qualitative work in limited geo
222 evel multivariable analysis of 2011 Medicare claims data (Part A hospital and Part B physician) for a
223 ted hospital variation in the sensitivity of claims data relative to clinical data from electronic he
224 Catheter-associated UTI rates determined by claims data seem to be inaccurate and are much lower tha
226 data from SDI Health, a large administrative claims data set, to conduct a retrospective cohort study
227 delines-Stroke registry linked with Medicare claims data set, we examined whether 30-day and 1-year o
229 t differences between ACS-NSQIP and Medicare claims data sets for measuring surgical complications.
231 Within 2 commercial and 1 federal (Medicare) claims data sources in the United States, we identified
233 ages include (a) the inherent limitations of claims data, such as incomplete, inaccurate, or missing
235 nce in cases identified by NLP compared with claims data, suggesting that formal surveillance efforts
236 re more closely concordant between trial and claims data than nonprocedural outcomes (eg, stroke, ble
238 study, linked to Medicare Benefits Schedule claims data, the cancer registry, and hospital admission
239 n Cancer Database, National Health Insurance Claims Data, the National Death Registry, and the bundle
242 ial designs have proposed the use of medical claims data to ascertain clinical events; however, the a
246 study uses commercial and Medicare Advantage claims data to compare medication fills, outpatient visi
250 Although caveats must be considered in using claims data to estimate prevalence in a population, thes
253 Adding electronically-available patient claims data to facility models consistently improved ant
254 from the US Renal Data System with Medicare claims data to identify 17,511 patients >/=67 years old
255 used Medicare fee-for-service administrative claims data to identify acute care hospitalizations for
256 se-control study to administrative insurance claims data to identify cases with nAMD and risk-set sam
257 y 1, 2007, to December 31, 2009, to Medicare claims data to obtain 1-year follow-up and medication ad
260 proportional-hazard models that use Medicare claims data to predict life expectancy and risk of death
266 he comparative performance of administrative claims data versus clinician-triggered event adjudicatio
267 tudinal cohort analysis of national Medicaid claims data was conducted of adults 21-64 years of age w
269 ive analysis of the Medicare fee-for-service claims data was performed for elderly patients admitted
271 ession analysis of national health insurance claims data was used to evaluate health care utilization
273 and Results Using 2007 to 2014 US healthcare claims data, we ascertained a retrospective cohort of wo
274 h Centers for Medicare and Medicaid Services claims data, we ascertained vital status from date of su
276 sing clinical registry data and longitudinal claims data, we developed a long-term survival predictio
278 y CathPCI registry data linked with Medicare claims data, we examined the association between operato
281 In this observational study using Medicare claims data, we identified incident cases with a primary
282 er Valve Therapy Registry linked to Medicare claims data, we identified patients >/=65 years old unde
283 gistry of Transplant Recipients and Medicare claims data, we studied 6780 HCV+ and 139 681 HCV- KT re
286 tched, de-identified reviews and malpractice claims data were available for 264 surgeons from 2000 to
288 urance enrollees from the US, administrative claims data were derived from 2 databases: (1) Optum Cli
295 e utilization of nursing home care; Medicare claims data were used to identify costs paid by Medicare
297 ment Advisory (MedPAC) has recommended using claims data wherever possible to measure clinical qualit
298 t ophthalmology-related investigations using claims data will likely continue to evolve as health ser
299 cal measures leading to frequent reliance on claims data with its flaws in determining quality, fragm
300 tient, the EHRs were linked to corresponding claims data with MRU and costs during years 2011 to 2013