Minimally invasive evaluation and treatment of colorectal liver metastases.

Int J Surg Oncol

Department of Surgery, Saint Agnes Hospital, 900 Caton Avenue, Mailbox no. 207, Baltimore, MD 21229, USA.

Published: August 2012

Minimally invasive techniques used in the evaluation and treatment of colorectal liver metastases (CRLMs) include ultrasonography (US), computed tomography, magnetic resonance imaging, percutaneous and operative ablation therapy, standard laparoscopic techniques, robotic techniques, and experimental techniques of natural orifice endoscopic surgery. Laparoscopic techniques range from simple staging laparoscopy with or without laparoscopic intraoperative US, through intermediate techniques including simple liver resections (LRs), to advanced techniques such as major hepatectomies. Hereins, we review minimally invasive evaluation and treatment of CRLM, focusing on a comparison of open LR (OLR) and minimally invasive LR (MILR). Although there are no randomized trials comparing OLR and MILR, nonrandomized data suggest that MILR compares favorably with OLR regarding morbidity, mortality, LOS, and cost, although significant selection bias exists. The future of MILR will likely include expanding criteria for resectability of CRLM and should include both a patient registry and a formalized process for surgeon training and credentialing.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3263653PMC
http://dx.doi.org/10.1155/2011/686030DOI Listing

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