About Me
Research Interests
Machine Learning, Data Mining, and Clinical Decision Support Systems
Publications
2021
Syed Asil Ali Naqvi; Karthik Tennankore; Amanda Vinson; Patrice C Roy; Syed Sibte Raza Abidi
Predicting Kidney Graft Survival Using Machine Learning Methods: Prediction Model Development and Feature Significance Analysis Study Journal Article
In: Journal of Medical Internet Research, vol. 23, no. 8, pp. e26843, 2021, ISSN: 1438-8871.
Abstract | Links | BibTeX | Tags: dimensionality reduction, feature sensitivity analysis, survival prediction
@article{Naqvi2021b,
title = {Predicting Kidney Graft Survival Using Machine Learning Methods: Prediction Model Development and Feature Significance Analysis Study},
author = {Syed Asil Ali Naqvi and Karthik Tennankore and Amanda Vinson and Patrice C Roy and Syed Sibte Raza Abidi},
url = {https://www.jmir.org/2021/8/e26843},
doi = {10.2196/26843},
issn = {1438-8871},
year = {2021},
date = {2021-08-27},
journal = {Journal of Medical Internet Research},
volume = {23},
number = {8},
pages = {e26843},
publisher = {Journal of Medical Internet Research},
abstract = {Background: Kidney transplantation is the optimal treatment for patients with end-stage renal disease. Short- and long-term kidney graft survival is influenced by a number of donor and recipient factors. Predicting the success of kidney transplantation is important for optimizing kidney allocation.
Objective: The aim of this study was to predict the risk of kidney graft failure across three temporal cohorts (within 1 year, within 5 years, and after 5 years following a transplant) based on donor and recipient characteristics. We analyzed a large data set comprising over 50,000 kidney transplants covering an approximate 20-year period.
Methods: We applied machine learning–based classification algorithms to develop prediction models for the risk of graft failure for three different temporal cohorts. Deep learning–based autoencoders were applied for data dimensionality reduction, which improved the prediction performance. The influence of features on graft survival for each cohort was studied by investigating a new nonoverlapping patient stratification approach.
Results: Our models predicted graft survival with area under the curve scores of 82% within 1 year, 69% within 5 years, and 81% within 17 years. The feature importance analysis elucidated the varying influence of clinical features on graft survival across the three different temporal cohorts.
Conclusions: In this study, we applied machine learning to develop risk prediction models for graft failure that demonstrated a high level of prediction performance. Acknowledging that these models performed better than those reported in the literature for existing risk prediction tools, future studies will focus on how best to incorporate these prediction models into clinical care algorithms to optimize the long-term health of kidney recipients.},
keywords = {dimensionality reduction, feature sensitivity analysis, survival prediction},
pubstate = {published},
tppubtype = {article}
}
Objective: The aim of this study was to predict the risk of kidney graft failure across three temporal cohorts (within 1 year, within 5 years, and after 5 years following a transplant) based on donor and recipient characteristics. We analyzed a large data set comprising over 50,000 kidney transplants covering an approximate 20-year period.
Methods: We applied machine learning–based classification algorithms to develop prediction models for the risk of graft failure for three different temporal cohorts. Deep learning–based autoencoders were applied for data dimensionality reduction, which improved the prediction performance. The influence of features on graft survival for each cohort was studied by investigating a new nonoverlapping patient stratification approach.
Results: Our models predicted graft survival with area under the curve scores of 82% within 1 year, 69% within 5 years, and 81% within 17 years. The feature importance analysis elucidated the varying influence of clinical features on graft survival across the three different temporal cohorts.
Conclusions: In this study, we applied machine learning to develop risk prediction models for graft failure that demonstrated a high level of prediction performance. Acknowledging that these models performed better than those reported in the literature for existing risk prediction tools, future studies will focus on how best to incorporate these prediction models into clinical care algorithms to optimize the long-term health of kidney recipients.
Syed Asil Ali Naqvi; Karthik Tennankore; Amanda Vinson; Syed Sibte Raza Abidi
Analyzing Association Rules for Graft Failure Following Deceased and Live Donor Kidney Transplantation Proceedings Article
In: 31st Medical Informatics Europe (MIE2021), 2021.
BibTeX | Tags: Association Rules, Machine Learning
@inproceedings{naqvi2021,
title = {Analyzing Association Rules for Graft Failure Following Deceased and Live Donor Kidney Transplantation},
author = {Syed Asil Ali Naqvi and Karthik Tennankore and Amanda Vinson and Syed Sibte Raza Abidi},
year = {2021},
date = {2021-05-29},
booktitle = {31st Medical Informatics Europe (MIE2021)},
keywords = {Association Rules, Machine Learning},
pubstate = {published},
tppubtype = {inproceedings}
}
2019
Raquel da Luz Diaz; Marcela de Oliveira Lima; João G B Alves; William Van Woensel; Asil Naqvi; Zahra Take; Syed Sibte Raza Abidi
A Digital Health Platform to Deliver Tailored Early Stimulation Programs for Children With Developmental Delay Proceedings Article
In: 17th World Congress on Medical and Health Informatics (MEDINFO'19), Aug 26-30, pp. 571 - 575, IOS Press, Lyon, France, 2019.
@inproceedings{DaLuzDiaz2019,
title = {A Digital Health Platform to Deliver Tailored Early Stimulation Programs for Children With Developmental Delay},
author = {Raquel da Luz Diaz and Marcela de Oliveira Lima and João G B Alves and William Van Woensel and Asil Naqvi and Zahra Take and Syed Sibte Raza Abidi},
url = {http://ebooks.iospress.nl/publication/52052},
doi = {10.3233/SHTI190287},
year = {2019},
date = {2019-08-26},
booktitle = {17th World Congress on Medical and Health Informatics (MEDINFO'19), Aug 26-30},
volume = {264},
pages = {571 - 575},
publisher = {IOS Press},
address = {Lyon, France},
keywords = {},
pubstate = {published},
tppubtype = {inproceedings}
}
0000
Syed Asil Ali Naqvi; Karthik Tennankore; Amanda Vinson; Patrice C. Roy; Syed Sibte Raza Abidi
Predicting Kidney Graft Survival using Machine Learning Methods: Prediction Model Development and Feature Significance Analysis Study (under review) Journal Article
In: Journal of Medical Internet Research, 0000.
BibTeX | Tags: Machine Learning, Predictive Models
@article{naqvi_jmir_21,
title = {Predicting Kidney Graft Survival using Machine Learning Methods: Prediction Model Development and Feature Significance Analysis Study (under review)},
author = {Syed Asil Ali Naqvi and Karthik Tennankore and Amanda Vinson and Patrice C. Roy and Syed Sibte Raza Abidi},
journal = {Journal of Medical Internet Research},
keywords = {Machine Learning, Predictive Models},
pubstate = {published},
tppubtype = {article}
}