Sara K Tedeschi1, Tianrun Cai1, Zeling He2, Yuri Ahuja3, Chuan Hong4, Katherine A Yates3, Kumar Dahal5, Chang Xu5, Houchen Lyu5, Kazuki Yoshida1, Daniel H Solomon1, Tianxi Cai6, Katherine P Liao1. 1. Brigham and Women's Hospital and Harvard Medical School, Boston, Massachusetts. 2. Brigham and Women's Hospital and Harvard T. H. Chan School of Public Health, Boston, Massachusetts. 3. Harvard Medical School, Boston, Massachusetts. 4. Harvard T. H. Chan School of Public Health, Boston, Massachusetts. 5. Brigham and Women's Hospital, Boston, Massachusetts. 6. Harvard T. H. Chan School of Public Health and Harvard Medical School, Boston, Massachusetts.
Abstract
OBJECTIVE: Identifying pseudogout in large data sets is difficult due to its episodic nature and a lack of billing codes specific to this acute subtype of calcium pyrophosphate (CPP) deposition disease. The objective of this study was to evaluate a novel machine learning approach for classifying pseudogout using electronic health record (EHR) data. METHODS: We created an EHR data mart of patients with ≥1 relevant billing code or ≥2 natural language processing (NLP) mentions of pseudogout or chondrocalcinosis, 1991-2017. We selected 900 subjects for gold standard chart review for definite pseudogout (synovitis + synovial fluid CPP crystals), probable pseudogout (synovitis + chondrocalcinosis), or not pseudogout. We applied a topic modeling approach to identify definite/probable pseudogout. A combined algorithm included topic modeling plus manually reviewed CPP crystal results. We compared algorithm performance and cohorts identified by billing codes, the presence of CPP crystals, topic modeling, and a combined algorithm. RESULTS: Among 900 subjects, 123 (13.7%) had pseudogout by chart review (68 definite, 55 probable). Billing codes had a sensitivity of 65% and a positive predictive value (PPV) of 22% for pseudogout. The presence of CPP crystals had a sensitivity of 29% and a PPV of 92%. Without using CPP crystal results, topic modeling had a sensitivity of 29% and a PPV of 79%. The combined algorithm yielded a sensitivity of 42% and a PPV of 81%. The combined algorithm identified 50% more patients than the presence of CPP crystals; the latter captured a portion of definite pseudogout and missed probable pseudogout. CONCLUSION: For pseudogout, an episodic disease with no specific billing code, combining NLP, machine learning methods, and synovial fluid laboratory results yielded an algorithm that significantly boosted the PPV compared to billing codes.
OBJECTIVE: Identifying pseudogout in large data sets is difficult due to its episodic nature and a lack of billing codes specific to this acute subtype of calcium pyrophosphate (CPP) deposition disease. The objective of this study was to evaluate a novel machine learning approach for classifying pseudogout using electronic health record (EHR) data. METHODS: We created an EHR data mart of patients with ≥1 relevant billing code or ≥2 natural language processing (NLP) mentions of pseudogout or chondrocalcinosis, 1991-2017. We selected 900 subjects for gold standard chart review for definite pseudogout (synovitis + synovial fluid CPP crystals), probable pseudogout (synovitis + chondrocalcinosis), or not pseudogout. We applied a topic modeling approach to identify definite/probable pseudogout. A combined algorithm included topic modeling plus manually reviewed CPP crystal results. We compared algorithm performance and cohorts identified by billing codes, the presence of CPP crystals, topic modeling, and a combined algorithm. RESULTS: Among 900 subjects, 123 (13.7%) had pseudogout by chart review (68 definite, 55 probable). Billing codes had a sensitivity of 65% and a positive predictive value (PPV) of 22% for pseudogout. The presence of CPP crystals had a sensitivity of 29% and a PPV of 92%. Without using CPP crystal results, topic modeling had a sensitivity of 29% and a PPV of 79%. The combined algorithm yielded a sensitivity of 42% and a PPV of 81%. The combined algorithm identified 50% more patients than the presence of CPP crystals; the latter captured a portion of definite pseudogout and missed probable pseudogout. CONCLUSION: For pseudogout, an episodic disease with no specific billing code, combining NLP, machine learning methods, and synovial fluid laboratory results yielded an algorithm that significantly boosted the PPV compared to billing codes.
Authors: Katherine P Liao; Jiehuan Sun; Tianrun A Cai; Nicholas Link; Chuan Hong; Jie Huang; Jennifer E Huffman; Jessica Gronsbell; Yichi Zhang; Yuk-Lam Ho; Victor Castro; Vivian Gainer; Shawn N Murphy; Christopher J O'Donnell; J Michael Gaziano; Kelly Cho; Peter Szolovits; Isaac S Kohane; Sheng Yu; Tianxi Cai Journal: J Am Med Inform Assoc Date: 2019-11-01 Impact factor: 4.497
Authors: Katherine P Liao; Tianxi Cai; Vivian Gainer; Sergey Goryachev; Qing Zeng-treitler; Soumya Raychaudhuri; Peter Szolovits; Susanne Churchill; Shawn Murphy; Isaac Kohane; Elizabeth W Karlson; Robert M Plenge Journal: Arthritis Care Res (Hoboken) Date: 2010-08 Impact factor: 4.794
Authors: Yichi Zhang; Tianrun Cai; Sheng Yu; Kelly Cho; Chuan Hong; Jiehuan Sun; Jie Huang; Yuk-Lam Ho; Ashwin N Ananthakrishnan; Zongqi Xia; Stanley Y Shaw; Vivian Gainer; Victor Castro; Nicholas Link; Jacqueline Honerlaw; Sicong Huang; David Gagnon; Elizabeth W Karlson; Robert M Plenge; Peter Szolovits; Guergana Savova; Susanne Churchill; Christopher O'Donnell; Shawn N Murphy; J Michael Gaziano; Isaac Kohane; Tianxi Cai; Katherine P Liao Journal: Nat Protoc Date: 2019-11-20 Impact factor: 13.491
Authors: Sheng Yu; Abhishek Chakrabortty; Katherine P Liao; Tianrun Cai; Ashwin N Ananthakrishnan; Vivian S Gainer; Susanne E Churchill; Peter Szolovits; Shawn N Murphy; Isaac S Kohane; Tianxi Cai Journal: J Am Med Inform Assoc Date: 2017-04-01 Impact factor: 4.497
Authors: April Jorge; Victor M Castro; April Barnado; Vivian Gainer; Chuan Hong; Tianxi Cai; Tianrun Cai; Robert Carroll; Joshua C Denny; Leslie Crofford; Karen H Costenbader; Katherine P Liao; Elizabeth W Karlson; Candace H Feldman Journal: Semin Arthritis Rheum Date: 2019-01-04 Impact factor: 5.532
Authors: Jean W Liew; Christine Peloquin; Sara K Tedeschi; David T Felson; Yuqing Zhang; Hyon K Choi; Robert Terkeltaub; Tuhina Neogi Journal: Arthritis Care Res (Hoboken) Date: 2022-03-04 Impact factor: 5.178