Development of a lupus nephritis suboptimal response prediction tool using renal histopathological and clinical laboratory variables at the time of diagnosis

被引:15
作者
Helget, Lindsay N. [1 ,2 ]
Dillon, David J. [1 ]
Wolf, Bethany [3 ]
Parks, Laura P. [1 ]
Self, Sally E. [4 ]
Bruner, Evelyn T. [4 ]
Oates, Evan E. [5 ]
Oates, Jim C. [1 ,6 ]
机构
[1] Med Univ South Carolina, Dept Med, Charleston, SC 29425 USA
[2] Univ Nebraska, Med Ctr, Dept Med, Omaha, NE 68105 USA
[3] Med Univ South Carolina, Dept Publ Hlth Sci, Charleston, SC 29425 USA
[4] Med Univ South Carolina, Dept Pathol & Lab Med, Charleston, SC 29425 USA
[5] Vanderbilt Univ, 221 Kirkland Hall, Nashville, TN 37235 USA
[6] Ralph H Johnson VA Med Ctr, Med Serv, Charleston, SC 29401 USA
来源
LUPUS SCIENCE & MEDICINE | 2021年 / 8卷 / 01期
关键词
lupus nephritis; outcome assessment; health care; lupus erythematosus; systemic; OUTCOMES; CLASSIFICATION; PATHOLOGY; FEATURES; CRITERIA;
D O I
10.1136/lupus-2021-000489
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Objective Lupus nephritis (LN) is an immune complex-mediated glomerular and tubulointerstitial disease in patients with SLE. Prediction of outcomes at the onset of LN diagnosis can guide decisions regarding intensity of monitoring and therapy for treatment success. Currently, no machine learning model of outcomes exists. Several outcomes modelling works have used univariate or linear modelling but were limited by the disease heterogeneity. We hypothesised that a combination of renal pathology results and routine clinical laboratory data could be used to develop and to cross-validate a clinically meaningful machine learning early decision support tool that predicts LN outcomes at approximately 1 year. Methods To address this hypothesis, patients with LN from a prospective longitudinal registry at the Medical University of South Carolina enrolled between 2003 and 2017 were identified if they had renal biopsies with International Society of Nephrology/Renal Pathology Society pathological classification. Clinical laboratory values at the time of diagnosis and outcome variables at approximately 1 year were recorded. Machine learning models were developed and cross-validated to predict suboptimal response. Results Five machine learning models predicted suboptimal response status in 10 times cross-validation with receiver operating characteristics area under the curve values >0.78. The most predictive variables were interstitial inflammation, interstitial fibrosis, activity score and chronicity score from renal pathology and urine protein-to-creatinine ratio, white blood cell count and haemoglobin from the clinical laboratories. A web-based tool was created for clinicians to enter these baseline clinical laboratory and histopathology variables to produce a probability score of suboptimal response. Conclusion Given the heterogeneity of disease presentation in LN, it is important that risk prediction models incorporate several data elements. This report provides for the first time a clinical proof-of-concept tool that uses the five most predictive models and simplifies understanding of them through a web-based application.
引用
收藏
页数:8
相关论文
共 22 条
  • [1] PREDICTING RENAL OUTCOMES IN SEVERE LUPUS NEPHRITIS - CONTRIBUTIONS OF CLINICAL AND HISTOLOGIC DATA
    AUSTIN, HA
    BOUMPAS, DT
    VAUGHAN, EM
    BALOW, JE
    [J]. KIDNEY INTERNATIONAL, 1994, 45 (02) : 544 - 550
  • [2] AUSTIN HA, 1995, NEPHROL DIAL TRANSPL, V10, P1620
  • [3] AUSTIN HA, 1984, KIDNEY INT, V25, P689, DOI 10.1038/ki.1984.75
  • [4] Revision of the International Society of Nephrology/Renal Pathology Society classification for lupus nephritis: clarification of definitions, and modified National Institutes of Health activity and chronicity indices
    Bajema, Ingeborg M.
    Wilhelmus, Suzanne
    Alpers, Charles E.
    Bruijn, Jan A.
    Colvin, Robert B.
    Cook, H. Terence
    D'Agati, Vivette D.
    Ferrario, Franco
    Haas, Mark
    Jennette, J. Charles
    Joh, Kensuke
    Nast, Cynthia C.
    Noel, Laure-Helene
    Rijnink, Emilie C.
    Roberts, Ian S. D.
    Seshan, Surya V.
    Sethi, Sanjeev
    Fogo, Agnes B.
    [J]. KIDNEY INTERNATIONAL, 2018, 93 (04) : 789 - 796
  • [5] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [6] Cyclophosphamide therapy for lupus nephritis: Poor renal survival in black Americans
    Dooley, MA
    Hogan, S
    Jennette, C
    Falk, R
    [J]. KIDNEY INTERNATIONAL, 1997, 51 (04) : 1188 - 1195
  • [7] American College of Rheumatology Guidelines for Screening, Treatment, and Management of Lupus Nephritis
    Hahn, Bevra H.
    McMahon, Maureen A.
    Wilkinson, Alan
    Wallace, W. Dean
    Daikh, David I.
    Fitzgerald, John D.
    Karpouzas, George A.
    Merrill, Joan T.
    Wallace, Daniel J.
    Yazdany, Jinoos
    Ramsey-Goldman, Rosalind
    Singh, Karandeep
    Khalighi, Mazdak
    Choi, Soo-In
    Gogia, Maneesh
    Kafaja, Suzanne
    Kamgar, Mohammad
    Lau, Christine
    Martin, William J.
    Parikh, Sefali
    Peng, Justin
    Rastogi, Anjay
    Chen, Weiling
    Grossman, Jennifer M.
    [J]. ARTHRITIS CARE & RESEARCH, 2012, 64 (06) : 797 - 808
  • [8] Research electronic data capture (REDCap)-A metadata-driven methodology and workflow process for providing translational research informatics support
    Harris, Paul A.
    Taylor, Robert
    Thielke, Robert
    Payne, Jonathon
    Gonzalez, Nathaniel
    Conde, Jose G.
    [J]. JOURNAL OF BIOMEDICAL INFORMATICS, 2009, 42 (02) : 377 - 381
  • [9] Hastie T., 2001, Springer series in statistics, The elements of statistical learning: data mining, inference, and prediction, Vsecond
  • [10] Updating the American College of Rheumatology revised criteria for the classification of systemic lupus erythematosus
    Hochberg, MC
    [J]. ARTHRITIS AND RHEUMATISM, 1997, 40 (09): : 1725 - 1725