Literature DB >> 35876889

An artificial intelligence approach for predicting cardiotoxicity in breast cancer patients receiving anthracycline.

Hsiang-Chun Lee1,2, Jhih-Yuan Shih3,4, Wei-Ting Chang5,6,7, Chung-Feng Liu8, Yin-Hsun Feng9, Chia-Te Liao5,10,11, Jhi-Joung Wang8, Zhih-Cherng Chen5.   

Abstract

Although anti-cancer therapy-induced cardiotoxicity is known, until now it lacks a reliable risk predictive model of the subsequent cardiotoxicity in breast cancer patients receiving anthracycline therapy. An artificial intelligence (AI) with a machine learning approach has yet to be applied in cardio-oncology. Herein, we aimed to establish a predictive model for differentiating patients at a high risk of developing cardiotoxicity, including cancer therapy-related cardiac dysfunction (CTRCD) and symptomatic heart failure with reduced ejection fraction. This prospective single-center study enrolled patients with newly diagnosed breast cancer who were preparing for anthracycline therapy from 2014 to 2018. We randomized the patients into a 70%/30% split group for ML model training and testing. We used 15 variables, including clinical, chemotherapy, and echocardiographic parameters, to construct a random forest model to predict CTRCD and heart failure with a reduced ejection fraction (HFrEF) during the 3-year follow-up period (median, 30 months). Comparisons of the predictive accuracies among the random forest, logistic regression, support-vector clustering (SVC), LightGBM, K-nearest neighbor (KNN), and multilayer perceptron (MLP) models were also performed. Notably, predicting CTRCD using the MLP model showed the best accuracy compared with the logistic regression, random forest, SVC, LightGBM, and KNN models. The areas under the curves (AUC) of MLP achieved 0.66 with the sensitivity and specificity as 0.86 and 0.53, respectively. Notably, among the features, the use of trastuzumab, hypertension, and anthracycline dose were the major determinants for the development of CTRCD in the logistic regression. Similarly, MLP, logistic regression, and SVM also showed higher AUCs for predicting the development of HFrEF. We also validated the AI prediction model with an additional set of patients developing HFrEF, and MLP presented an AUC of 0.81. Collectively, an AI prediction model is promising for facilitating physicians to predict CTRCD and HFrEF in breast cancer patients receiving anthracycline therapy. Further studies are warranted to evaluate its impact in clinical practice.
© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Keywords:  Anthracycline; Artificial intelligence; Breast cancer; MACCEs; Machine learning

Mesh:

Substances:

Year:  2022        PMID: 35876889     DOI: 10.1007/s00204-022-03341-y

Source DB:  PubMed          Journal:  Arch Toxicol        ISSN: 0340-5761            Impact factor:   6.168


  15 in total

1.  Recommendations for cardiac chamber quantification by echocardiography in adults: an update from the American Society of Echocardiography and the European Association of Cardiovascular Imaging.

Authors:  Roberto M Lang; Luigi P Badano; Victor Mor-Avi; Jonathan Afilalo; Anderson Armstrong; Laura Ernande; Frank A Flachskampf; Elyse Foster; Steven A Goldstein; Tatiana Kuznetsova; Patrizio Lancellotti; Denisa Muraru; Michael H Picard; Ernst R Rietzschel; Lawrence Rudski; Kirk T Spencer; Wendy Tsang; Jens-Uwe Voigt
Journal:  J Am Soc Echocardiogr       Date:  2015-01       Impact factor: 5.251

2.  Deep Learning-Based Automated Echocardiographic Quantification of Left Ventricular Ejection Fraction: A Point-of-Care Solution.

Authors:  Federico M Asch; Victor Mor-Avi; David Rubenson; Steven Goldstein; Muhamed Saric; Issam Mikati; Samuel Surette; Ali Chaudhry; Nicolas Poilvert; Ha Hong; Russ Horowitz; Daniel Park; Jose L Diaz-Gomez; Brandon Boesch; Sara Nikravan; Rachel B Liu; Carolyn Philips; James D Thomas; Randolph P Martin; Roberto M Lang
Journal:  Circ Cardiovasc Imaging       Date:  2021-06-15       Impact factor: 7.792

3.  Screening for cardiac contractile dysfunction using an artificial intelligence-enabled electrocardiogram.

Authors:  Zachi I Attia; Suraj Kapa; Francisco Lopez-Jimenez; Paul M McKie; Dorothy J Ladewig; Gaurav Satam; Patricia A Pellikka; Maurice Enriquez-Sarano; Peter A Noseworthy; Thomas M Munger; Samuel J Asirvatham; Christopher G Scott; Rickey E Carter; Paul A Friedman
Journal:  Nat Med       Date:  2019-01-07       Impact factor: 53.440

4.  Selection of safe artemisinin derivatives using a machine learning-based cardiotoxicity platform and in vitro and in vivo validation.

Authors:  Onat Kadioglu; Sabine M Klauck; Edmond Fleischer; Letian Shan; Thomas Efferth
Journal:  Arch Toxicol       Date:  2021-05-22       Impact factor: 5.153

5.  The impact of a multidisciplinary cardio-oncology programme on cardiovascular outcomes in Taiwan.

Authors:  Wei-Ting Chang; Yin-Hsun Feng; Yu Hsuan Kuo; Wei-Yu Chen; Hong-Chang Wu; Chien-Tai Huang; Wen-Ching Wang; Chia-Te Liao; Zhih-Cherng Chen
Journal:  ESC Heart Fail       Date:  2020-07-04

6.  Machine learning-based lifetime breast cancer risk reclassification compared with the BOADICEA model: impact on screening recommendations.

Authors:  Pierre O Chappuis; Maria C Katapodi; Chang Ming; Valeria Viassolo; Nicole Probst-Hensch; Ivo D Dinov
Journal:  Br J Cancer       Date:  2020-06-22       Impact factor: 7.640

7.  Clinical, Echocardiographic, and Biomarker Associations With Impaired Cardiorespiratory Fitness Early After HER2-Targeted Breast Cancer Therapy.

Authors:  Alis Bonsignore; Thomas H Marwick; Scott C Adams; Babitha Thampinathan; Emily Somerset; Eitan Amir; Mike Walker; Husam Abdel-Qadir; C Anne Koch; Heather J Ross; Anna Woo; Bernd J Wintersperger; Mark J Haykowsky; Paaladinesh Thavendiranathan
Journal:  JACC CardioOncol       Date:  2021-11-16

Review 8.  Multimodality Advanced Cardiovascular and Molecular Imaging for Early Detection and Monitoring of Cancer Therapy-Associated Cardiotoxicity and the Role of Artificial Intelligence and Big Data.

Authors:  Jennifer M Kwan; Evangelos K Oikonomou; Mariana L Henry; Albert J Sinusas
Journal:  Front Cardiovasc Med       Date:  2022-03-15

9.  Baseline cardiovascular risk assessment in cancer patients scheduled to receive cardiotoxic cancer therapies: a position statement and new risk assessment tools from the Cardio-Oncology Study Group of the Heart Failure Association of the European Society of Cardiology in collaboration with the International Cardio-Oncology Society.

Authors:  Alexander R Lyon; Susan Dent; Susannah Stanway; Helena Earl; Christine Brezden-Masley; Alain Cohen-Solal; Carlo G Tocchetti; Javid J Moslehi; John D Groarke; Jutta Bergler-Klein; Vincent Khoo; Li Ling Tan; Markus S Anker; Stephan von Haehling; Christoph Maack; Radek Pudil; Ana Barac; Paaladinesh Thavendiranathan; Bonnie Ky; Tomas G Neilan; Yury Belenkov; Stuart D Rosen; Zaza Iakobishvili; Aaron L Sverdlov; Ludhmila A Hajjar; Ariane V S Macedo; Charlotte Manisty; Fortunato Ciardiello; Dimitrios Farmakis; Rudolf A de Boer; Hadi Skouri; Thomas M Suter; Daniela Cardinale; Ronald M Witteles; Michael G Fradley; Joerg Herrmann; Robert F Cornell; Ashutosh Wechelaker; Michael J Mauro; Dragana Milojkovic; Hugues de Lavallade; Frank Ruschitzka; Andrew J S Coats; Petar M Seferovic; Ovidiu Chioncel; Thomas Thum; Johann Bauersachs; M Sol Andres; David J Wright; Teresa López-Fernández; Chris Plummer; Daniel Lenihan
Journal:  Eur J Heart Fail       Date:  2020-08-06       Impact factor: 15.534

10.  Development and Validation of a Risk Score Model for Predicting the Cardiovascular Outcomes After Breast Cancer Therapy: The CHEMO-RADIAT Score.

Authors:  Do Young Kim; Myung-Soo Park; Jong-Chan Youn; Sunki Lee; Jae Hyuk Choi; Mi-Hyang Jung; Lee Su Kim; Sung Hea Kim; Seongwoo Han; Kyu-Hyung Ryu
Journal:  J Am Heart Assoc       Date:  2021-08-07       Impact factor: 5.501

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