Literature DB >> 31328849

Predicting ideal outcome after pediatric liver transplantation: An exploratory study using machine learning analyses to leverage Studies of Pediatric Liver Transplantation Data.

Sharad Indur Wadhwani1, Evelyn K Hsu2, Michele L Shaffer3, Ravinder Anand4, Vicky Lee Ng5, John C Bucuvalas6.   

Abstract

Machine learning analyses allow for the consideration of numerous variables in order to accommodate complex relationships that would not otherwise be apparent in traditional statistical methods to better classify patient risk. The SPLIT registry data were analyzed to determine whether baseline demographic factors and clinical/biochemical factors in the first-year post-transplant could predict ideal outcome at 3 years (IO-3) after LT. Participants who received their first, isolated LT between 2002 and 2006 and had follow-up data 3 years post-LT were included. IO-3 was defined as alive at 3 years, normal ALT (<50) or GGT (<50), normal GFR, no non-liver transplants, no cytopenias, and no PTLD. Heat map analysis and RFA were used to characterize the impact of baseline and 1-year factors on IO-3. 887/1482 SPLIT participants met inclusion criteria; 334 had IO-3. Demographic, biochemical, and clinical variables did not elucidate a visual signal on heat map analysis. RFA identified non-white race (vs white race), increased length of operation, vascular and biliary complications within 30 days, and duct-to-duct biliary anastomosis to be negatively associated with IO-3. UNOS regions 2 and 5 were also identified as important factors. RFA had an accuracy rate of 0.71 (95% CI: 0.68-0.74), PPV = 0.83, and NPV = 0.70. RFA identified participant variables that predicted IO-3. These findings may allow for better risk stratification and personalization of care following pediatric liver transplantation.
© 2019 Wiley Periodicals, Inc.

Entities:  

Keywords:  ideal outcome; machine learning; pediatric liver transplant

Mesh:

Year:  2019        PMID: 31328849      PMCID: PMC7980252          DOI: 10.1111/petr.13554

Source DB:  PubMed          Journal:  Pediatr Transplant        ISSN: 1397-3142


  22 in total

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Journal:  J Thorac Cardiovasc Surg       Date:  2006-07       Impact factor: 5.209

Review 2.  Application of the intelligent techniques in transplantation databases: a review of articles published in 2009 and 2010.

Authors:  F S Sousa; A D Hummel; R F Maciel; F M Cohrs; A E J Falcão; F Teixeira; R Baptista; F Mancini; T M da Costa; D Alves; I T Pisa
Journal:  Transplant Proc       Date:  2011-05       Impact factor: 1.066

3.  The Trouble With Exceptional Exceptions.

Authors:  E K Hsu; J Bucuvalas
Journal:  Am J Transplant       Date:  2016-07-13       Impact factor: 8.086

4.  OPTN/SRTR 2016 Annual Data Report: Liver.

Authors:  W R Kim; J R Lake; J M Smith; D P Schladt; M A Skeans; A M Harper; J L Wainright; J J Snyder; A K Israni; B L Kasiske
Journal:  Am J Transplant       Date:  2018-01       Impact factor: 8.086

5.  Health status of children alive 10 years after pediatric liver transplantation performed in the US and Canada: report of the studies of pediatric liver transplantation experience.

Authors:  Vicky L Ng; Estella M Alonso; John C Bucuvalas; Geoff Cohen; Christine A Limbers; James W Varni; George Mazariegos; John Magee; Susan V McDiarmid; Ravinder Anand
Journal:  J Pediatr       Date:  2011-12-20       Impact factor: 4.406

6.  Big Data, Predictive Analytics, and Quality Improvement in Kidney Transplantation: A Proof of Concept.

Authors:  T R Srinivas; D J Taber; Z Su; J Zhang; G Mour; D Northrup; A Tripathi; J E Marsden; W P Moran; P D Mauldin
Journal:  Am J Transplant       Date:  2017-01-04       Impact factor: 8.086

7.  Heterogeneity and disparities in the use of exception scores in pediatric liver allocation.

Authors:  E K Hsu; M Shaffer; M Bradford; N Mayer-Hamblett; S Horslen
Journal:  Am J Transplant       Date:  2015-02       Impact factor: 8.086

8.  Verbal and physical aggression directed at nursing home staff by residents.

Authors:  Mark S Lachs; Tony Rosen; Jeanne A Teresi; Joseph P Eimicke; Mildred Ramirez; Stephanie Silver; Karl Pillemer
Journal:  J Gen Intern Med       Date:  2012-12-08       Impact factor: 5.128

9.  An introduction to recursive partitioning: rationale, application, and characteristics of classification and regression trees, bagging, and random forests.

Authors:  Carolin Strobl; James Malley; Gerhard Tutz
Journal:  Psychol Methods       Date:  2009-12

Review 10.  Precision Public Health for the Era of Precision Medicine.

Authors:  Muin J Khoury; Michael F Iademarco; William T Riley
Journal:  Am J Prev Med       Date:  2015-11-04       Impact factor: 5.043

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Authors:  Charat Thongprayoon; Shennen A Mao; Caroline C Jadlowiec; Michael A Mao; Napat Leeaphorn; Wisit Kaewput; Pradeep Vaitla; Pattharawin Pattharanitima; Supawit Tangpanithandee; Pajaree Krisanapan; Fawad Qureshi; Pitchaphon Nissaisorakarn; Matthew Cooper; Wisit Cheungpasitporn
Journal:  J Clin Med       Date:  2022-06-08       Impact factor: 4.964

2.  Distinct Phenotypes of Kidney Transplant Recipients in the United States with Limited Functional Status as Identified through Machine Learning Consensus Clustering.

Authors:  Charat Thongprayoon; Caroline C Jadlowiec; Wisit Kaewput; Pradeep Vaitla; Shennen A Mao; Michael A Mao; Napat Leeaphorn; Fawad Qureshi; Pattharawin Pattharanitima; Fahad Qureshi; Prakrati C Acharya; Pitchaphon Nissaisorakarn; Matthew Cooper; Wisit Cheungpasitporn
Journal:  J Pers Med       Date:  2022-05-25

3.  Neighborhood socioeconomic deprivation is associated with worse patient and graft survival following pediatric liver transplantation.

Authors:  Sharad I Wadhwani; Andrew F Beck; John Bucuvalas; Laura Gottlieb; Uma Kotagal; Jennifer C Lai
Journal:  Am J Transplant       Date:  2020-02-06       Impact factor: 8.086

4.  Random forest analysis identifies change in serum creatinine and listing status as the most predictive variables of an outcome for young children on liver transplant waitlist.

Authors:  Sakil Kulkarni; Lisa Chi; Charles Goss; Qinghua Lian; Michelle Nadler; Janis Stoll; Maria Doyle; Yumirle Turmelle; Adeel Khan
Journal:  Pediatr Transplant       Date:  2020-11-24

5.  Racial/ethnic disparities in wait-list outcomes are only partly explained by socioeconomic deprivation among children awaiting liver transplantation.

Authors:  Sharad I Wadhwani; Jin Ge; Laura Gottlieb; Courtney Lyles; Andrew F Beck; John Bucuvalas; John Neuhaus; Uma Kotagal; Jennifer C Lai
Journal:  Hepatology       Date:  2021-12-08       Impact factor: 17.425

6.  Center variation in long-term outcomes for socioeconomically deprived children.

Authors:  Sharad I Wadhwani; Chiung-Yu Huang; Laura Gottlieb; Andrew F Beck; John Bucuvalas; Uma Kotagal; Courtney Lyles; Jennifer C Lai
Journal:  Am J Transplant       Date:  2021-03-04       Impact factor: 9.369

Review 7.  Artificial Intelligence in hepatology, liver surgery and transplantation: Emerging applications and frontiers of research.

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Journal:  World J Hepatol       Date:  2021-12-27

Review 8.  Revisiting transplant immunology through the lens of single-cell technologies.

Authors:  Arianna Barbetta; Brittany Rocque; Deepika Sarode; Johanna Ascher Bartlett; Juliet Emamaullee
Journal:  Semin Immunopathol       Date:  2022-08-18       Impact factor: 11.759

9.  Addressing Social Adversity to Improve Outcomes for Children After Liver Transplant.

Authors:  Sharad I Wadhwani; Laura Gottlieb; John C Bucuvalas; Courtney Lyles; Jennifer C Lai
Journal:  Hepatology       Date:  2021-10-04       Impact factor: 17.425

10.  Machine learning-based prediction of health outcomes in pediatric organ transplantation recipients.

Authors:  Michael O Killian; Seyedeh Neelufar Payrovnaziri; Dipankar Gupta; Dev Desai; Zhe He
Journal:  JAMIA Open       Date:  2021-03-12
  10 in total

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