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급성 뇌경색에서 자화율강조영상에서 보이는 현저한 유출정맥 저신호 강도의 임상적 유용성: Penumbra 및 예후 예측인자로서 가능성

Clinical Utility of Prominent Hypointense Signals in the Draining Veins on Susceptibility-Weighted Imaging in Acute Cerebral Infarct: As a Marker of Penumbra and a Predictor of Prognosis

  • 이현실 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 안국진 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 최현석 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 장진희 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 정소령 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 김범수 (가톨릭의과대학 서울성모병원 영상의학과) ;
  • 양동원 (가톨릭의과대학 서울성모병원 신경과)
  • Lee, Hyun Sil (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Ahn, Kook Jin (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Choi, Hyun Seok (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Jang, Jin Hee (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Jung, So Lyung (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Kim, Bum Soo (Department of Radiology, Seoul St. Mary's Hospital, The Catholic University of Korea) ;
  • Yang, Dong Won (Department of Neurology, Seoul St. Mary's Hospital, The Catholic University of Korea)
  • 투고 : 2014.11.13
  • 심사 : 2014.11.23
  • 발행 : 2014.12.31

초록

목적: 급성 뇌경색 환자의 자화율강조영상에서 보이는 관류 손상 부위의 현저한 유출정맥 저신호 강도 (PHSV)의 임상적 유용성을 평가하고자 하였다. 대상과 방법: 확산강조영상과 자화율강조영상을 포함한 뇌 자기공명영상을 시행한 급성 뇌경색 환자에서 추적 단면영상검사가 있는 환자 18명을 대상으로 뇌경색 및 주변부에서 PHSV 유무와 위치를 정성적으로 확인하였다. 자화율강조영상에서 PHSV와 정상 뇌피질 정맥의 신호강도차이 비율을 측정하였고, 주변 PHSV 유무와 추적검사에서 뇌경색 크기 변화의 상관관계를 분석하였다. 결과: 18명의 환자 중 10명의 환자가 추적검사에서 뇌경색이 진행하였고, 8명은 변화가 없었다. 뇌경색이 진행한 10명의 환자 중 9명에서 뇌경색 주변 PHSV가 관찰되었고, 새로 생긴 경색 부위는 초기 자화율강조영상에서 보였던 주변 PHSV 부위와 잘 일치하였다. 경색의 크기가 변화 없는 환자군과 비교하여 경색이 진행한 환자군에서 뇌경색 주변 PHSV의 빈도가 통계적으로 유의하게 높았고 (p=0.0001), 신호강도차이 비율도 유의하게 높았다 (p=0.006). 결론: 자화율강조영상에서 보이는 주변 PHSV는 반음영부 (penumbra)의 지표가 될수 있으며 급성 뇌경색 예후 예측에 이용될 수 있다.

Purpose : A relative increase in deoxyhemoglobin levels in hypoperfused tissue can cause prominent hypointense signals in the draining veins (PHSV) within areas of impaired perfusion in susceptibility-weighted imaging (SWI). The purpose of this study is to evaluate the usefulness of SWI in patients with acute cerebral infarction by evaluating PHSV within areas of impaired perfusion and to investigate the usefulness of PHSV in predicting prognosis of cerebral infarction. Materials and Methods: In 18 patients with acute cerebral infarction who underwent brain MRI with diffusion-weighted imaging and SWI and follow-up brain MRI or CT, we reviewed the presence and location of the PHSV within and adjacent to areas of cerebral infarction qualitatively and measured the signal intensity difference ratio of PHSVs to contralateral normal appearing cortical veins quantitatively on SWI. The relationship between the presence of the PHSV and the change in the extent of infarction in follow-up images was analyzed. Results: Of the 18 patients, 10 patients showed progression of the infarction, and 8 patients showed little change on follow- up imaging. On SWI, of the 10 patients with progression 9 patients showed peripheral PHSV and the newly developed infarctions corresponded well to area with peripheral PHSV on initial SWI. Only one patient without peripheral PHSV showed progression of the infarct. The patients with infarction progression revealed significantly higher presence of peripheral PHSV (p=0.0001) and higher mean signal intensity difference ratio (p=0.006) comparing to the patients with little change. Conclusion: SWI can demonstrate a peripheral PHSV as a marker of penumbra and with this finding we can predict the prognosis of acute infarction. The signal intensity difference of PHSV to brain tissue on SWI can be used in predicting prognosis of acute cerebral infarction.

키워드

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