Literature DB >> 33807714

Multi-Drug Featurization and Deep Learning Improve Patient-Specific Predictions of Adverse Events.

Ioannis N Anastopoulos1,2, Chloe K Herczeg2, Kasey N Davis2, Atray C Dixit2.   

Abstract

While the clinical approval process is able to filter out medications whose utility does not offset their adverse drug reaction profile in humans, it is not well suited to characterizing lower frequency issues and idiosyncratic multi-drug interactions that can happen in real world diverse patient populations. With a growing abundance of real-world evidence databases containing hundreds of thousands of patient records, it is now feasible to build machine learning models that incorporate individual patient information to provide personalized adverse event predictions. In this study, we build models that integrate patient specific demographic, clinical, and genetic features (when available) with drug structure to predict adverse drug reactions. We develop an extensible graph convolutional approach to be able to integrate molecular effects from the variable number of medications a typical patient may be taking. Our model outperforms standard machine learning methods at the tasks of predicting hospitalization and death in the UK Biobank dataset yielding an R2 of 0.37 and an AUC of 0.90, respectively. We believe our model has potential for evaluating new therapeutic compounds for individualized toxicities in real world diverse populations. It can also be used to prioritize medications when there are multiple options being considered for treatment.

Entities:  

Keywords:  FDA FAERS; UK Biobank; adverse events; graph convolution; neural networks; real world evidence

Mesh:

Substances:

Year:  2021        PMID: 33807714      PMCID: PMC7967515          DOI: 10.3390/ijerph18052600

Source DB:  PubMed          Journal:  Int J Environ Res Public Health        ISSN: 1660-4601            Impact factor:   4.614


  16 in total

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Journal:  Chemosphere       Date:  2014-11-11       Impact factor: 7.086

6.  Medication regimen complexity and hospital readmission for an adverse drug event.

Authors:  Megan N Willson; Christopher L Greer; Douglas L Weeks
Journal:  Ann Pharmacother       Date:  2013-11-05       Impact factor: 3.154

7.  Adverse Drug Events in Patients with Chronic Kidney Disease Associated with Multiple Drug Interactions and Polypharmacy.

Authors:  Julia Sommer; Andreas Seeling; Harald Rupprecht
Journal:  Drugs Aging       Date:  2020-02-13       Impact factor: 3.923

Review 8.  Increasing Diversity in Clinical Trials: Overcoming Critical Barriers.

Authors:  Luther T Clark; Laurence Watkins; Ileana L Piña; Mary Elmer; Ola Akinboboye; Millicent Gorham; Brenda Jamerson; Cassandra McCullough; Christine Pierre; Adam B Polis; Gary Puckrein; Jeanne M Regnante
Journal:  Curr Probl Cardiol       Date:  2018-11-09       Impact factor: 5.200

9.  Parental comorbidity and medication use in the USA: a panel study of 785 000 live births.

Authors:  Andrew J Sun; Shufeng Li; Chiyuan A Zhang; Tina K Jensen; Rune Lindahl-Jacobsen; Michael L Eisenberg
Journal:  Hum Reprod       Date:  2020-03-27       Impact factor: 6.918

Review 10.  Factors affecting the development of adverse drug reactions (Review article).

Authors:  Muaed Jamal Alomar
Journal:  Saudi Pharm J       Date:  2013-02-24       Impact factor: 4.330

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  2 in total

1.  Construction and Interpretation of Prediction Model of Teicoplanin Trough Concentration via Machine Learning.

Authors:  Pan Ma; Ruixiang Liu; Wenrui Gu; Qing Dai; Yu Gan; Jing Cen; Shenglan Shang; Fang Liu; Yongchuan Chen
Journal:  Front Med (Lausanne)       Date:  2022-03-08

2.  Correction: Anastopoulos et al. Multi-Drug Featurization and Deep Learning Improve Patient-Specific Predictions of Adverse Events. Int. J. Environ. Res. Public Health 2021, 18, 2600.

Authors:  Ioannis N Anastopoulos; Chloe K Herczeg; Kasey N Davis; Atray C Dixit
Journal:  Int J Environ Res Public Health       Date:  2022-04-01       Impact factor: 3.390

  2 in total

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