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Improving the Reliability of Pharmacokinetic Parameters at Dynamic Contrast-enhanced MRI in Astrocytomas: A Deep Learning Approach

Authors
Choi, Kyu SungYou, Sung-HyeHan, YoseobYe, Jong ChulJeong, BumseokChoi, Seung Hong
Issue Date
10월-2020
Publisher
RADIOLOGICAL SOC NORTH AMERICA
Citation
RADIOLOGY, v.297, no.1, pp.178 - 188
Indexed
SCIE
SCOPUS
Journal Title
RADIOLOGY
Volume
297
Number
1
Start Page
178
End Page
188
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/53080
DOI
10.1148/radiol.2020192763
ISSN
0033-8419
Abstract
Background: Pharmacokinetic (PK) parameters obtained from dynamic contrast agent-enhanced (DCE) MRI evaluates the microcirculation permeability of astrocytomas, but the unreliability from arterial input function (AIF) remains a challenge. Purpose: To develop a deep learning model that improves the reliability of AIF for DCE MRI and to validate the reliability and diagnostic performance of PK parameters by using improved AIF in grading astrocytomas. Materials and Methods: This retrospective study included 386 patients (mean age, 52 years +/- 16 [standard deviation]; 226 men) with astrocytomas diagnosed with histopathologic analysis who underwent dynamic susceptibility contrast (DSC)-enhanced and DCE MRI preoperatively from April 2010 to January 2018. The AIF was obtained from each sequence: AIF obtained from DSC-enhanced MRI (AIF(DSC)) and AIF measured at DCE MRI (AIF(DCE)). The model was trained to translate AIF(DCE) into AIF(DSC), and after training, outputted neural-network-generated AIF (AIF(generated DSC)) with input AIF DCE. By using the three different AIFs, volume transfer constant (K-trans), fractional volume of extravascular extracellular space (V-e), and vascular plasma space (V-p) were averaged from the tumor areas in the DCE MRI. To validate the model, intraclass correlation coefficients and areas under the receiver operating characteristic curve (AUCs) of the PK parameters in grading astrocytomas were compared by using different AIFs. Results: The AIF-generated, DSC-derived PK parameters showed higher AUCs in grading astrocytomas than those derived from AIF(DCE) (mean K-trans, 0.88 [95% confidence interval {CI}: 0.81, 0.93] vs 0.72 [95% CI: 0.63, 0.79], P = .04; mean V-e, 0.87 [95% CI: 0.79, 0.92] vs 0.70 [95% CI: 0.61, 0.77], P = .049, respectively). K-trans and V-e showed higher intraclass correlation coefficients for AIF(generated DSC) than for AIF(DCE) (0.91 vs 0.38, P < .001; and 0.86 vs 0.60, P < .001, respectively). In AIF analysis, baseline signal intensity (SI), maximal SI, and wash-in slope showed higher intraclass correlation coefficients with AIF(generated DSC) than AIF(DCE) (0.77 vs 0.29, P < .001; 0.68 vs 0.42, P = .003; and 0.66 vs 0.45, P = .01, respectively. Conclusion: A deep learning algorithm improved both reliability and diagnostic performance of MRI pharmacokinetic parameters for differentiating astrocytoma grades. (C) RSNA, 2020
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