2022
DOI: 10.1200/edbk_350652
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Artificial Intelligence in Oncology: Current Capabilities, Future Opportunities, and Ethical Considerations

Abstract: The promise of highly personalized oncology care using artificial intelligence (AI) technologies has been forecasted since the emergence of the field. Cumulative advances across the science are bringing this promise to realization, including refinement of machine learning– and deep learning algorithms; expansion in the depth and variety of databases, including multiomics; and the decreased cost of massively parallelized computational power. Examples of successful clinical applications of AI can be found throug… Show more

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Cited by 64 publications
(51 citation statements)
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“…In particular, one AI model for MSI detection had lower performance in a cohort involving a high number of Ashkenazi Jews due to their elevated proportion of the BRAF mutation ( 69 ). To this end, there may also be overrepresentation of certain groups and the presence of inter-rater variability in the data-labelling process ( 111 , 112 ). For this reason, algorithms must be externally validated in which outcomes are reproduced in different contexts to ensure the rigor of the models.…”
Section: Clinical Validation Applications Limitations and Future Dire...mentioning
confidence: 99%
See 1 more Smart Citation
“…In particular, one AI model for MSI detection had lower performance in a cohort involving a high number of Ashkenazi Jews due to their elevated proportion of the BRAF mutation ( 69 ). To this end, there may also be overrepresentation of certain groups and the presence of inter-rater variability in the data-labelling process ( 111 , 112 ). For this reason, algorithms must be externally validated in which outcomes are reproduced in different contexts to ensure the rigor of the models.…”
Section: Clinical Validation Applications Limitations and Future Dire...mentioning
confidence: 99%
“…Other concerns involve ethical responsibility and accountability in the presence of AI errors. There is also a lack of structure and standardization regarding the storage and collection of data ( 111 , 112 ).…”
Section: Clinical Validation Applications Limitations and Future Dire...mentioning
confidence: 99%
“…The evaluation of the efficacy deals with the determination of numerical estimators able to quantify the performance of the new method as precision, accuracy, robustness, etc. Despite the importance of the topic, there are no worldwide accepted regulations that define harmonized standards to evaluate the performance of AI methods [ 28 , 29 , 30 ]. A first group of guidance rules has been defined in the Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD-AI [ 31 ]).…”
Section: Data Integrationmentioning
confidence: 99%
“…For the analysis of distributed data, advanced-federated learning models can be deployed. Whole-blood, multi-cancer detection using deep sequencing, virtual biopsies, and NLP to infer health trajectories from medical records, and advanced clinical-decision support systems that incorporate genomics and clinomics, are some of the emerging clinically useful techniques [18]. Oncology heavily relies on evidence-based, medicine-scoring systems for cancer-risk assessment, disease diagnosis, prognostic staging, treatment, and surveillance monitoring.…”
Section: Ai For Cancer Researchmentioning
confidence: 99%