Utilizing timestamps of longitudinal electronic health record data to classify clinical deterioration events

被引:8
作者
Fu, Li-Heng [1 ]
Knaplund, Chris [1 ]
Cato, Kenrick [2 ]
Perotte, Adler [1 ]
Kang, Min-Jeoung [3 ]
Dykes, Patricia C. [4 ,5 ]
Albers, David [1 ,6 ]
Rossetti, Sarah Collins [1 ,2 ]
机构
[1] Columbia Univ, Dept Biomed Informat, 622 W 168th St,Presbyterian Bldg 20th Floor, New York, NY 10032 USA
[2] Columbia Univ, Sch Nursing, New York, NY 10032 USA
[3] Catholic Univ Korea, Coll Nursing, Seoul, South Korea
[4] Brigham & Womens Hosp, Div Gen Internal Med & Primary Care, 75 Francis St, Boston, MA 02115 USA
[5] Harvard Med Sch, Boston, MA 02115 USA
[6] Univ Colorado, Sect Informat & Data Sci, Dept Pediat, Aurora, CO USA
关键词
electronic health records; predictive modeling; clinical informatics; early warning scores; machine learning; EARLY WARNING SCORE; RAPID RESPONSE; PREDICTION MODEL; VALIDATION; REGRESSION; ARREST; CARE; DOCUMENTATION; ANTECEDENTS; ADMISSION;
D O I
10.1093/jamia/ocab111
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objective: To propose an algorithm that utilizes only timestamps of longitudinal electronic health record data to classify clinical deterioration events. Materials and methods: This retrospective study explores the efficacy of machine learning algorithms in classifying clinical deterioration events among patients in intensive care units using sequences of timestamps of vital sign measurements, flowsheets comments, order entries, and nursing notes. We design a data pipeline to partition events into discrete, regular time bins that we refer to as timesteps. Logistic regressions, random forest classifiers, and recurrent neural networks are trained on datasets of different length of timesteps, respectively, against a composite outcome of death, cardiac arrest, and Rapid Response Team calls. Then these models are validated on a holdout dataset. Results: A total of 6720 intensive care unit encounters meet the criteria and the final dataset includes 830 578 timestamps. The gated recurrent unit model utilizes timestamps of vital signs, order entries, flowsheet comments, and nursing notes to achieve the best performance on the time-to-outcome dataset, with an area under the precision-recall curve of 0.101 (0.06, 0.137), a sensitivity of 0.443, and a positive predictive value of 0. 092 at the threshold of 0.6. Discussion and Conclusion: This study demonstrates that our recurrent neural network models using only timestamps of longitudinal electronic health record data that reflect healthcare processes achieve well-performing discriminative power.
引用
收藏
页码:1955 / 1963
页数:9
相关论文
共 52 条
[11]   Derivation of a cardiac arrest prediction model using ward vital signs [J].
Churpek, Matthew M. ;
Yuen, Trevor C. ;
Park, Seo Young ;
Meltzer, David O. ;
Hall, Jesse B. ;
Edelson, Dana P. .
CRITICAL CARE MEDICINE, 2012, 40 (07) :2102-2108
[12]  
Collins Sarah A, 2012, NI 2012 (2012), V2012, P93
[13]   RELATIONSHIP BETWEEN NURSING DOCUMENTATION AND PATIENTS' MORTALITY [J].
Collins, Sarah A. ;
Cato, Kenrick ;
Albers, David ;
Scott, Karen ;
Stetson, Peter D. ;
Bakken, Suzanne ;
Vawdrey, David K. .
AMERICAN JOURNAL OF CRITICAL CARE, 2013, 22 (04) :306-313
[14]   "Reading between the lines" of flow sheet data: nurses' optional documentation associated with cardiac arrest outcomes [J].
Collins, Sarah A. ;
Vawdrey, David K. .
APPLIED NURSING RESEARCH, 2012, 25 (04) :251-257
[15]   The impact of rapid response systems on mortality and cardiac arrests - A literature review [J].
Custo, Rebecca Teuma ;
Trapani, Josef .
INTENSIVE AND CRITICAL CARE NURSING, 2020, 59
[16]   Findings of the First Consensus Conference on Medical Emergency Teams [J].
DeVita, Michael A. ;
Bellomo, Rinaldo ;
Hillman, Kenneth ;
Kellum, John ;
Rotondi, Armando ;
Teres, Dan ;
Auerbach, Andrew ;
Chen, Wen-Jon ;
Duncan, Kathy ;
Kenward, Gary ;
Bell, Max ;
Buist, Michael ;
Chen, Jack ;
Bion, Julian ;
Kirby, Ann ;
Lighthall, Geoff ;
Ovreveit, John ;
Braithwaite, R. Scott ;
Gosbee, John ;
Milbrandt, Eric ;
Peberdy, Mimi ;
Savitz, Lucy ;
Young, Lis ;
Galhotra, Sanjay .
CRITICAL CARE MEDICINE, 2006, 34 (09) :2463-2478
[17]   Nurses' worry or concern and early recognition of deteriorating patients on general wards in acute care hospitals: a systematic review [J].
Douw, Gooske ;
Schoonhoven, Lisette ;
Holwerda, Tineke ;
Huisman-de Waal, Getty ;
van Zanten, Arthur R. H. ;
van Achterberg, Theo ;
van der Hoeven, Johannes G. .
CRITICAL CARE, 2015, 19
[18]   Multicenter derivation and validation of an early warning score for acute respiratory failure or death in the hospital [J].
Dziadzko, Mikhail A. ;
Novotny, Paul J. ;
Sloan, Jeff ;
Gajic, Ognjen ;
Herasevich, Vitaly ;
Mirhaji, Parsa ;
Wu, Yiyuan ;
Gong, Michelle Ng .
CRITICAL CARE, 2018, 22
[19]   Early detection of impending physiologic deterioration among patients who are not in intensive care: Development of predictive models using data from an automated electronic medical record [J].
Escobar, Gabriel J. ;
LaGuardia, Juan Carlos ;
Turk, Benjamin J. ;
Ragins, Arona ;
Kipnis, Patricia ;
Draper, David .
JOURNAL OF HOSPITAL MEDICINE, 2012, 7 (05) :388-395
[20]   Development and validation of early warning score system: A systematic literature review [J].
Fu, Li-Heng ;
Schwartz, Jessica ;
Moy, Amanda ;
Knaplund, Chris ;
Kang, Min-Jeoung ;
Schnock, Kumiko O. ;
Garcia, Jose P. ;
Jia, Haomiao ;
Dykes, Patricia C. ;
Cato, Kenrick ;
Albers, David ;
Rossetti, Sarah Collins .
JOURNAL OF BIOMEDICAL INFORMATICS, 2020, 105