尸体痉挛
中颅窝
医学
神经导航
轨道(动力学)
颅骨
外科
颞窝
中窝
解剖
放射科
磁共振成像
工程类
航空航天工程
作者
Spyridon Komaitis,Georgios P. Skandalakis,Evangelos Drosos,Eleftherios Neromyliotis,Eirini Charalampopoulou,Lykourgos Anastasopoulos,Georgios A. Zenonos,George Stranjalis,Aristotelis Kalyvas,Christos Koutsarnakis
出处
期刊:Neurosurgical Focus
[Journal of Neurosurgery Publishing Group]
日期:2024-04-01
卷期号:56 (4): E6-E6
被引量:1
标识
DOI:10.3171/2024.1.focus23839
摘要
OBJECTIVE The lateral retrocanthal transorbital endoscopic approach (LRCTEA) facilitates trajectory to the middle fossa, preserving the lateral canthal tendon and thus avoiding postoperative complications such as eyelid malposition. Here, the authors sought to define the surgical anatomy and technique of LRCTEA using a stepwise approach in cadaveric heads and offer an in-depth examination of existing quantitative data from cadaveric studies. METHODS The authors performed LRCTEA to the middle cranial fossa under neuronavigation in 7 cadaveric head specimens that underwent high-resolution (1-mm) CT scans preceding the dissections. RESULTS The LRCTEA provided access to middle fossa regions including the cavernous sinus, Meckel’s cave, and medial temporal lobe. The trajectories and endpoints of the approach were confirmed using electromagnetic neuronavigation. A stepwise approach was delineated and recorded. CONCLUSIONS The authors’ cadaveric study delineates the surgical anatomy and technique of the LRCTEA, providing a stepwise approach for its implementation. As these approaches continue to evolve, their development and refinement will play an important role in expanding the surgical options available to neurosurgeons, ultimately improving outcomes for patients with complex skull base pathologies. The LRCTEA presents a promising advancement in skull base surgery, particularly for accessing challenging middle fossa regions. However, surgeons must remain vigilant to potential complications, including transient diplopia, orbital hematoma, or damage to the optic apparatus.
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