External validation of a machine learning classifier to identify unhealthy alcohol use in hospitalized patients

被引:8
作者
Lin, Yiqi [1 ]
Sharma, Brihat [2 ]
Thompson, Hale M. [2 ]
Boley, Randy [2 ]
Perticone, Kathryn [3 ]
Chhabra, Neeraj [4 ,5 ]
Afshar, Majid [6 ]
Karnik, Niranjan S. [1 ,2 ]
机构
[1] Rush Univ, Rush Med Coll, Chicago, IL 60612 USA
[2] Rush Univ, Rush Med Coll, Dept Psychiat & Behav Sci, 1645 West Jackson Blvd,Suite 600, Chicago, IL 60612 USA
[3] Cooper Univ Hlth Care, Addict Med, Camden, NJ USA
[4] Rush Univ, Rush Med Coll, Dept Emergency Med, Chicago, IL 60612 USA
[5] John H Stroger Jr Hosp Cook Cty, Dept Emergency Med, Chicago, IL USA
[6] Univ Wisconsin, Div Allergy Pulm & Crit Care Med, Dept Med, Sch Med & Publ Hlth, Madison, WI USA
基金
美国医疗保健研究与质量局;
关键词
Addiction consultation service; data science; inpatient screening; machine learning; natural language processing; unhealthy alcohol use; PRIMARY-CARE; FACILITATORS; DEPENDENCE; BARRIERS; AUDIT;
D O I
10.1111/add.15730
中图分类号
R194 [卫生标准、卫生检查、医药管理];
学科分类号
摘要
Background and Aims Unhealthy alcohol use (UAU) is one of the leading causes of global morbidity. A machine learning approach to alcohol screening could accelerate best practices when integrated into electronic health record (EHR) systems. This study aimed to validate externally a natural language processing (NLP) classifier developed at an independent medical center. Design Retrospective cohort study. Setting The site for validation was a midwestern United States tertiary-care, urban medical center that has an inpatient structured universal screening model for unhealthy substance use and an active addiction consult service. Participants/Cases Unplanned admissions of adult patients between October 23, 2017 and December 31, 2019, with EHR documentation of manual alcohol screening were included in the cohort (n = 57 605). Measurements The Alcohol Use Disorders Identification Test (AUDIT) served as the reference standard. AUDIT scores >= 5 for females and >= 8 for males served as cases for UAU. To examine error in manual screening or under-reporting, a post hoc error analysis was conducted, reviewing discordance between the NLP classifier and AUDIT-derived reference. All clinical notes excluding the manual screening and AUDIT documentation from the EHR were included in the NLP analysis. Findings Using clinical notes from the first 24 hours of each encounter, the NLP classifier demonstrated an area under the receiver operating characteristic curve (AUCROC) and precision-recall area under the curve (PRAUC) of 0.91 (95% CI = 0.89-0.92) and 0.56 (95% CI = 0.53-0.60), respectively. At the optimal cut point of 0.5, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were 0.66 (95% CI = 0.62-0.69), 0.98 (95% CI = 0.98-0.98), 0.35 (95% CI = 0.33-0.38), and 1.0 (95% CI = 1.0-1.0), respectively. Conclusions External validation of a publicly available alcohol misuse classifier demonstrates adequate sensitivity and specificity for routine clinical use as an automated screening tool for identifying at-risk patients.
引用
收藏
页码:925 / 933
页数:9
相关论文
共 50 条
  • [41] Alcohol-related and mental health care for patients with unhealthy alcohol use and posttraumatic stress disorder in a National Veterans Affairs cohort
    Chen, Jessica A.
    Owens, Mandy D.
    Browne, Kendall C.
    Williams, Emily C.
    JOURNAL OF SUBSTANCE ABUSE TREATMENT, 2018, 85 : 1 - 9
  • [42] Construction and validation of risk prediction models for pulmonary embolism in hospitalized patients based on different machine learning methods
    Huang, Tao
    Huang, Zhihai
    Peng, Xiaodong
    Pang, Lingpin
    Sun, Jie
    Wu, Jinbo
    He, Jinman
    Fu, Kaili
    Wu, Jun
    Sun, Xishi
    FRONTIERS IN CARDIOVASCULAR MEDICINE, 2024, 11
  • [43] Prospective validation of a machine learning model that uses provider notes to identify candidates for resective epilepsy surgery
    Wissel, Benjamin D.
    Greiner, Hansel M.
    Glauser, Tracy A.
    Holland-Bouley, Katherine D.
    Mangano, Francesco T.
    Santel, Daniel
    Faist, Robert
    Zhang, Nanhua
    Pestian, John P.
    Szczesniak, Rhonda D.
    Dexheimer, Judith W.
    EPILEPSIA, 2020, 61 (01) : 39 - 48
  • [44] Machine Learning Consensus Clustering of Hospitalized Patients with Admission Hyponatremia
    Thongprayoon, Charat
    Hansrivijit, Panupong
    Mao, Michael A.
    Vaitla, Pradeep K.
    Kattah, Andrea G.
    Pattharanitima, Pattharawin
    Vallabhajosyula, Saraschandra
    Nissaisorakarn, Voravech
    Petnak, Tananchai
    Keddis, Mira T.
    Erickson, Stephen B.
    Dillon, John J.
    Garovic, Vesna D.
    Cheungpasitporn, Wisit
    DISEASES, 2021, 9 (03)
  • [45] Machine Learning Consensus Clustering Approach for Hospitalized Patients with Dysmagnesemia
    Thongprayoon, Charat
    Sy-Go, Janina Paula T.
    Nissaisorakarn, Voravech
    Dumancas, Carissa Y.
    Keddis, Mira T.
    Kattah, Andrea G.
    Pattharanitima, Pattharawin
    Vallabhajosyula, Saraschandra
    Mao, Michael A.
    Qureshi, Fawad
    Garovic, Vesna D.
    Dillon, John J.
    Erickson, Stephen B.
    Cheungpasitporn, Wisit
    DIAGNOSTICS, 2021, 11 (11)
  • [46] A Machine Learning Predictive Model of Bloodstream Infection in Hospitalized Patients
    Murri, Rita
    De Angelis, Giulia
    Antenucci, Laura
    Fiori, Barbara
    Rinaldi, Riccardo
    Fantoni, Massimo
    Damiani, Andrea
    Patarnello, Stefano
    Sanguinetti, Maurizio
    Valentini, Vincenzo
    Posteraro, Brunella
    Masciocchi, Carlotta
    DIAGNOSTICS, 2024, 14 (04)
  • [47] Predicting Readmission or Death After Discharge From the ICU: External Validation and Retraining of a Machine Learning Model
    de Hond, Anne A. H.
    Kant, Ilse M. J.
    Fornasa, Mattia
    Cina, Giovanni
    Elbers, Paul W. G.
    Thoral, Patrick J. J.
    Arbous, M. Sesmu
    Steyerberg, Ewout W. W.
    CRITICAL CARE MEDICINE, 2023, 51 (02) : 291 - 300
  • [48] The Development and Validation of a Machine Learning Model to Predict Bacteremia and Fungemia in Hospitalized Patients Using Electronic Health Record Data
    Bhavani, Sivasubramanium V.
    Lonjers, Zachary
    Carey, Kyle A.
    Afshar, Majid
    Gilbert, Emily R.
    Shah, Nirav S.
    Huang, Elbert S.
    Churpek, Matthew M.
    CRITICAL CARE MEDICINE, 2020, 48 (11) : E1020 - E1028
  • [49] Development and external validation of a machine learning model for prediction of survival in extremity leiomyosarcoma
    Yu, Austin
    Lee, Linus
    Yi, Thomas
    Fice, Michael
    Achar, Rohan K.
    Tepper, Sarah
    Jones, Conor
    Klein, Evan
    Buac, Neil
    Lopez-Hisijos, Nicolas
    Colman, Matthew W.
    Gitelis, Steven
    Blank, Alan T.
    SURGICAL ONCOLOGY-OXFORD, 2024, 57
  • [50] Study and prediction of photocurrent density with external validation using machine learning models
    Sahu, Nepal
    Azad, Chandrashekhar
    Kumar, Uday
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2024, 92 : 1335 - 1355