Comparison of 12 surrogates to characterize CT radiation risk across a clinical population.

dc.contributor.author

Ria, Francesco

dc.contributor.author

Fu, Wanyi

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Hoye, Jocelyn

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Segars, W Paul

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Kapadia, Anuj J

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Samei, Ehsan

dc.date.accessioned

2021-02-26T00:09:41Z

dc.date.available

2021-02-26T00:09:41Z

dc.date.issued

2021-02-23

dc.date.updated

2021-02-26T00:09:38Z

dc.description.abstract

Objectives

Quantifying radiation burden is essential for justification, optimization, and personalization of CT procedures and can be characterized by a variety of risk surrogates inducing different radiological risk reflections. This study compared how twelve such metrics can characterize risk across patient populations.

Methods

This study included 1394 CT examinations (abdominopelvic and chest). Organ doses were calculated using Monte Carlo methods. The following risk surrogates were considered: volume computed tomography dose index (CTDIvol), dose-length product (DLP), size-specific dose estimate (SSDE), DLP-based effective dose (EDk ), dose to a defining organ (ODD), effective dose and risk index based on organ doses (EDOD, RI), and risk index for a 20-year-old patient (RIrp). The last three metrics were also calculated for a reference ICRP-110 model (ODD,0, ED0, and RI0). Lastly, motivated by the ICRP, an adjusted-effective dose was calculated as [Formula: see text]. A linear regression was applied to assess each metric's dependency on RI. The results were characterized in terms of risk sensitivity index (RSI) and risk differentiability index (RDI).

Results

The analysis reported significant differences between the metrics with EDr showing the best concordance with RI in terms of RSI and RDI. Across all metrics and protocols, RSI ranged between 0.37 (SSDE) and 1.29 (RI0); RDI ranged between 0.39 (EDk) and 0.01 (EDr) cancers × 103patients × 100 mGy.

Conclusion

Different risk surrogates lead to different population risk characterizations. EDr exhibited a close characterization of population risk, also showing the best differentiability. Care should be exercised in drawing risk predictions from unrepresentative risk metrics applied to a population.

Key points

• Radiation risk characterization in CT populations is strongly affected by the surrogate used to describe it. • Different risk surrogates can lead to different characterization of population risk. • Healthcare professionals should exercise care in ascribing an implicit risk to factors that do not closely reflect risk.
dc.identifier

10.1007/s00330-021-07753-9

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0938-7994

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1432-1084

dc.identifier.uri

https://hdl.handle.net/10161/22390

dc.language

eng

dc.publisher

Springer Science and Business Media LLC

dc.relation.ispartof

European radiology

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10.1007/s00330-021-07753-9

dc.subject

Clinical decision-making

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Computed X-ray tomography

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Ionizing radiation

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Radiation exposure

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Risk assessment

dc.title

Comparison of 12 surrogates to characterize CT radiation risk across a clinical population.

dc.type

Journal article

duke.contributor.orcid

Ria, Francesco|0000-0001-5902-7396

duke.contributor.orcid

Samei, Ehsan|0000-0001-7451-3309

pubs.organisational-group

Staff

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Duke

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