2019
DOI: 10.1007/s00259-019-04593-0
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Artificial intelligence and radiomics in nuclear medicine: potentials and challenges

Abstract: Artificial intelligence involves a wide range of smart techniques that are applicable to medical services including nuclear medicine. Recent advances in computer power, availability of accumulated digital archives containing large amount of patient images, and records bring new opportunities for the implementation of artificial techniques in nuclear medicine. As a subset of artificial intelligence, machine learning is an emerging tool that possibly perform many clinical tasks. Nuclear medicine community needs … Show more

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Cited by 24 publications
(14 citation statements)
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References 23 publications
(31 reference statements)
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“…There are many data modelling techniques and also many open source tools that can be used to facilitate the design of a data model. The choice of the optimal algorithm depends on a variety of factors that include, but are not limited to, data type/learning approach (supervised or unsupervised learning), the importance of accuracy in the chosen model, the need for speed in data analysis, the data analysed, the size of the data set, the need for hierarchical output, or the need for categorical variables [30].…”
Section: Discussionmentioning
confidence: 99%
“…There are many data modelling techniques and also many open source tools that can be used to facilitate the design of a data model. The choice of the optimal algorithm depends on a variety of factors that include, but are not limited to, data type/learning approach (supervised or unsupervised learning), the importance of accuracy in the chosen model, the need for speed in data analysis, the data analysed, the size of the data set, the need for hierarchical output, or the need for categorical variables [30].…”
Section: Discussionmentioning
confidence: 99%
“…It is widely known that individual differences in tumors, as a result of tumor heterogeneity, are the key to the lack of effective treatment. 6,7 Clinically, there is a great heterogeneity of tumors, and clinicians need clear decision-making information to support decisions about the treatment. 8 Tumor heterogeneity is mainly manifested in morphology, gene expression, metabolism, proliferation, metastasis, and response to treatment.…”
Section: Why Is Radiomics a Good Choice To Personalize Patient Treatmmentioning
confidence: 99%
“…Machine learning is emergent in nuclear medicine and offers great potentials and challenges (Uribe et al., 2019). It offers the opportunity to save time for clinicians by performing repetitive tasks, generating preliminary reports and detecting what is not visible to the human eye (Aktolun, 2019). The main challenges of machine learning in nuclear medicine, outlined by Aktolun, are the insufficient amount of data to train generated model and the labelling of the data set by experts that takes a lot of time (Aktolun, 2019).…”
Section: Review On Machine Learning Applications For Predictive Data mentioning
confidence: 99%
“…It offers the opportunity to save time for clinicians by performing repetitive tasks, generating preliminary reports and detecting what is not visible to the human eye (Aktolun, 2019). The main challenges of machine learning in nuclear medicine, outlined by Aktolun, are the insufficient amount of data to train generated model and the labelling of the data set by experts that takes a lot of time (Aktolun, 2019). The most frequently encountered data are radiomics that include high‐throughput computation of quantitative medical images features (Ibrahim et al., 2019).…”
Section: Review On Machine Learning Applications For Predictive Data mentioning
confidence: 99%