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Author

Rudi Agius

Other affiliations: Technical University of Denmark
Bio: Rudi Agius is an academic researcher from Copenhagen University Hospital. The author has contributed to research in topics: Risk assessment. The author has an hindex of 1, co-authored 2 publications receiving 34 citations. Previous affiliations of Rudi Agius include Technical University of Denmark.

Papers
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Journal ArticleDOI
TL;DR: The CLL Treatment-Infection Model (CLL-TIM) is developed that identifies patients at risk of infection or CLL treatment within 2 years of diagnosis as validated on both internal and external cohorts.
Abstract: Infections have become the major cause of morbidity and mortality among patients with chronic lymphocytic leukemia (CLL) due to immune dysfunction and cytotoxic CLL treatment. Yet, predictive models for infection are missing. In this work, we develop the CLL Treatment-Infection Model (CLL-TIM) that identifies patients at risk of infection or CLL treatment within 2 years of diagnosis as validated on both internal and external cohorts. CLL-TIM is an ensemble algorithm composed of 28 machine learning algorithms based on data from 4,149 patients with CLL. The model is capable of dealing with heterogeneous data, including the high rates of missing data to be expected in the real-world setting, with a precision of 72% and a recall of 75%. To address concerns regarding the use of complex machine learning algorithms in the clinic, for each patient with CLL, CLL-TIM provides explainable predictions through uncertainty estimates and personalized risk factors.

68 citations

Posted ContentDOI
29 Oct 2021-medRxiv
TL;DR: In this paper, a machine learning model was trained to predict mortality within 12 weeks of the first positive SARS-CoV-2 test, which can aid clinicians to implement precision medicine.
Abstract: Interpretable risk assessment of SARS-CoV-2 positive patients can aid clinicians to implement precision medicine. Here we trained a machine learning model to predict mortality within 12 weeks of a first positive SARS-CoV-2 test. By leveraging data on 33,928 confirmed SARS-CoV-2 cases in eastern Denmark, we considered 2,723 variables extracted from electronic health records (EHR) including demographics, diagnoses, medications, laboratory test results and vital parameters. A discrete-time framework for survival modelling enabled us to predict personalized survival curves and explain individual risk factors. Performances of weighted concordance index 0.95 and precision-recall area under the curve 0.71 were measured on the test set. Age, sex, number of medications, previous hospitalizations and lymphocyte counts were identified as top mortality risk factors. Our explainable survival model developed on EHR data also revealed temporal dynamics of the 22 selected risk factors. Upon further validation, this model may allow direct reporting of personalized survival probabilities in routine care.

1 citations


Cited by
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Journal ArticleDOI
TL;DR: In this paper , a review of 99 Q1 articles covering explainable artificial intelligence (XAI) techniques is presented, including SHAP, LIME, GradCAM, LRP, Fuzzy classifier, EBM, CBR, and others.

80 citations

Journal ArticleDOI
TL;DR: This narrative Review describes important concepts in machine learning for unfamiliar readers, details machine learning's current applications in haematological malignancy, and summarises important concepts for clinicians to be aware of when appraising research that uses machine learning.

59 citations

Journal ArticleDOI
TL;DR: The purpose of this review is to provide readers with tools to interpret and critically appraise machine learning literature and to discuss limitations of the machine‐learning approach.
Abstract: Digitalization of the medical record and integration of genomic methods into clinical practice have resulted in an unprecedented wealth of data. Machine learning is a subdomain of artificial intelligence that attempts to computationally extract meaningful insights from complex data structures. Applications of machine learning in haematological scenarios are steadily increasing. However, basic concepts are often unfamiliar to clinicians and investigators. The purpose of this review is to provide readers with tools to interpret and critically appraise machine learning literature. We begin with the elucidation of standard terminology and then review examples in haematology. Guidelines for designing and evaluating machine-learning studies are provided. Finally, we discuss limitations of the machine-learning approach.

50 citations

Journal ArticleDOI
14 Sep 2020
TL;DR: An overview of the basics of machine learning is provided and current progress and challenges in applying this technology to cancer diagnosis, prognosis, and treatment recommendations are highlighted, including a discussion of current takeaways for clinicians.
Abstract: The volume and complexity of scientific and clinical data in oncology have grown markedly over recent years, including but not limited to the realms of electronic health data, radiographic and histologic data, and genomics. This growth holds promise for a deeper understanding of malignancy and, accordingly, more personalized and effective oncologic care. Such goals require, however, the development of new methods to fully make use of the wealth of available data. Improvements in computer processing power and algorithm development have positioned machine learning, a branch of artificial intelligence, to play a prominent role in oncology research and practice. This review provides an overview of the basics of machine learning and highlights current progress and challenges in applying this technology to cancer diagnosis, prognosis, and treatment recommendations, including a discussion of current takeaways for clinicians.

36 citations

Journal ArticleDOI
19 May 2022-Blood
TL;DR: Patients with CLL with close hospital contactss and in particular those above 70 years of age with one or more comorbidities should be considered for closer monitoring and pre-emptive antiviral therapy upon a positive SARS-CoV-2 test.

32 citations