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Diabetes diagnosis from administrative claims and estimation of the true prevalence of diabetes among 4.2 million individuals of the Veneto region (North East Italy)
Affiliation:1. Department of Information Engineering, University of Padova, Padova, Italy;2. Arsenàl.IT, Veneto''s Research Centre for eHealth Innovation, Treviso, Italy;3. Department of Medicine, University of Padova, Padova, Italy;1. Department of Medicine and Rehabilitation, Policlinico di Monza, Monza, Italy;2. Department of Cardiology, Policlinico di Monza, Monza, Italy;3. Department of Medicine and Surgery, Università Degli Studi di Milano Bicocca, Milan, Italy;1. Division of Cardiology, Department of Medicine, China Medical University Hospital, 2 Yuh-Der Road, 40447 Taichung, Taiwan;2. China Medical University, Taichung, Taiwan;3. Division of Endocrinology and Metabolism, Department of Internal Medicine, Changhua Christian Hospital, Changhua, Taiwan;4. Division of Endocrinology and Metabolism, Department of Internal Medicine, Changhua Christian Hospital Lukang Branch, Lukang, Taiwan;5. Division of Endocrinology and Metabolism, Department of Internal Medicine, Changhua Christian Hospital Yuanlin Branch, Yuanlin, Taiwan;6. Division of Endocrinology and Metabolism, Department of Internal Medicine, Changhua Christian Hospital Yunlin Branch, Yunlin, Taiwan;7. Department of Bioinformatics and Medical Engineering, Asia University, Taichung, Taiwan;1. Bach Christian Hospital, Qalandarabad, Abbottabad, Hazara, KPK, Pakistan;2. Life for a Child Program, Diabetes NSW & ACT, Glebe, NSW 2037, Australia;3. NHMRC Clinical Trials Centre, University of Sydney, NSW 2006, Australia;1. Hamburg University of Applied Sciences, Hamburg, Germany;2. Techniker Krankenkasse (TK), Hamburg, Germany;1. Division of Endocrinology and Metabolism, Department of Internal Medicine, Chi-Mei Medical Center, Chia-Li Branch, Tainan, Taiwan;2. Department of Healthcare Administration and Medical Informatics, Kaohsiung Medical University, Kaohsiung, Taiwan;3. Division of Endocrinology and Metabolism, Department of Internal Medicine, Chi-Mei Medical Center, Tainan, Taiwan;4. Department of Medical Research, Chi-Mei Medical Center, Tainan, Taiwan;5. Department of Senior Citizen Service Management, Chia Nan University of Pharmacy and Science, Tainan, Taiwan;1. Department of Public Health, China Medical University College of Public Health, Taichung, Taiwan;2. Department of Health Services Administration, China Medical University College of Public Health, Taichung, Taiwan;3. Department of Nursing, Cheng Ching Hospital, Taichung, Taiwan;4. Management Office for Health Data, China Medical University Hospital, Taichung, Taiwan;5. Department of Nursing, China Medical University Hospital, Taichung, Taiwan;6. Department of Obstetrics and Gynaecology, China Medical University Hospital, Taichung, Taiwan;7. Institute of Clinical Medical Science, China Medical University College of Medicine, Taichung, Taiwan;9. School of Nursing, China Medical University, Taichung, Taiwan
Abstract:
Background and aimsDiabetes can often remain undiagnosed or unregistered in administrative databases long after its onset, even when laboratory test results meet diagnostic criteria. In the present work, we analyse healthcare data of the Veneto Region, North East Italy, with the aims of: (i) developing an algorithm for the identification of diabetes from administrative claims (4,236,007 citizens), (ii) assessing its reliability by comparing its performance with the gold standard clinical diagnosis from a clinical database (7525 patients), (iii) combining the algorithm and the laboratory data of the regional Health Information Exchange (rHIE) system (543,520 subjects) to identify undiagnosed diabetes, and (iv) providing a credible estimate of the true prevalence of diabetes in Veneto.Methods and resultsThe proposed algorithm for the identification of diabetes was fed by administrative data related to drug dispensations, outpatient visits, and hospitalisations. Evaluated against a clinical database, the algorithm achieved 95.7% sensitivity, 87.9% specificity, and 97.6% precision. To identify possible cases of undiagnosed diabetes, we applied standard diagnostic criteria to the laboratory test results of the subjects who, according to the algorithm, had no diabetes-related claims. Using a simplified probabilistic model, we corrected our claims-based estimate of known diabetes (6.17% prevalence; 261,303 cases) to account for undiagnosed cases, yielding an estimated total prevalence of 7.50%.ConclusionWe herein validated an algorithm for the diagnosis of diabetes using administrative claims against the clinical diagnosis. Together with rHIE laboratory data, this allowed to identify possibly undiagnosed diabetes and estimate the true prevalence of diabetes in Veneto.
Keywords:Administrative claims  Diabetes  Health information exchange  Laboratory reports  Prevalence  Undiagnosed diabetes  Veneto  rHIE"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0050"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  regional Health Information Exchange  ADA"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0060"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  American Diabetes Association  HL7"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0070"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Health Level 7  LOINC"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0080"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Logical Observation Identifiers Names and Codes  ICD-9-CM"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0090"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  International Classification of Diseases - 9th revision - Clinical Modification  ATC"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0100"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  Anatomical Therapeutic Chemical  FG"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0110"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  fasting glucose  PG"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0120"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  post-load glucose  HbA1c"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0130"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  glycated haemoglobin  OGTT"  },{"  #name"  :"  keyword"  ,"  $"  :{"  id"  :"  kwrd0140"  },"  $$"  :[{"  #name"  :"  text"  ,"  _"  :"  oral glucose tolerance test
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