Academic Radiology
Volume 13, Issue 9 , Pages 1124-1134, September 2006

Cardiac Motion Analysis to Improve Pacing Site Selection in CRT

  • Heng Huang

      Affiliations

    • Department of Computer Science, Dartmouth College, 6211 Sudikoff, Hanover, NH 03755
    • Corresponding Author InformationAddress correspondence to: HH
  • ,
  • Li Shen

      Affiliations

    • Computer and Information Science Department, University of Massachusetts, Dartmouth, MA 02747
  • ,
  • Rong Zhang

      Affiliations

    • Department of Computer Science, Dartmouth College, 6211 Sudikoff, Hanover, NH 03755
  • ,
  • Fillia Makedon

      Affiliations

    • Department of Computer Science, Dartmouth College, 6211 Sudikoff, Hanover, NH 03755
  • ,
  • Bruce Hettleman

      Affiliations

    • Department of Cardiology, Dartmouth Medical School, NH 03756
  • ,
  • Justin Pearlman

      Affiliations

    • Department of Cardiology, Dartmouth Medical School, NH 03756

Received 3 February 2006; accepted 24 July 2006.

Rationale and Objectives

The aim of the study is to build cardiac wall motion models to characterize mechanical dyssynchrony and predict pacing sites for the left ventricle of the heart in cardiac resynchronization therapy (CRT).

Materials and Methods

Cardiac magnetic resonance imaging data from 20 patients are used, in which half have heart failure problems. We propose two spatio-temporal ventricular motion models to analyze the mechanical dyssynchrony of heart: radial motion series and wall motion series (a time series of radial length or wall thickness change). The hierarchical agglomerative clustering technique is applied to the motion series to find candidate pacing sites. All experiments are performed separately on each ventricular motion model to facilitate performance comparison among models.

Results

The experimental results demonstrate that the proposed methods perform as well as we expect. Our techniques not only effectively generate the candidate pacing sites list that can help guide CRT, but also derive clustering results that can distinguish the heart conditions between patients and normals perfectly to help medical diagnosis and prognosis. After comparing the results between two different ventricular motion models, the wall motion series model shows a better performance.

Conclusion

In a traditional CRT device deployment, pacing sites are selected without efficient prediction, which runs the risk of suboptimal benefits. Our techniques can extract useful wall motion information from ventricular mechanical dyssynchrony and identify the candidate pacing sites with maximum contraction delay to assist pacemaker implantation in CRT.

Key Words: Computer-aided diagnosis, cardiac resynchronization therapy, time series analysis, medical image computing, heart failure

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PII: S1076-6332(06)00410-7

doi:10.1016/j.acra.2006.07.010

Academic Radiology
Volume 13, Issue 9 , Pages 1124-1134, September 2006