Abstract

Simple SummaryRecurrent laryngeal nerve (RLN) dysfunction remains a major source of morbidity after thyroid surgery. Intraoperative neuromonitoring can qualify and quantify RLN function according to the laryngeal electromyography (EMG) response evoked by electrical stimulation of the RLN. To the best of our knowledge, this is the first report to discuss the severity and mechanism of RLN dysfunction and postoperative voice in patients who have received monitored thyroidectomy. For optimal voice and swallowing outcomes after thyroid surgery, thermal injury must be avoided, especially when using energy-based devices, and mechanical injury must be identified early to avoid a more severe dysfunction. Adherence to standard intraoperative neuromonitoring (IONM) procedures for thyroid surgery is suggested, including standard procedures for acquiring and interpreting intraoperative RLN signals, for identifying and classifying RLN injury mechanisms, for performing laryngeal examinations and comprehensive voice assessments (subjective and objective voice analysis) before and after surgery, and for performing standard follow-up procedures.Intraoperative neuromonitoring can qualify and quantify RLN function during thyroid surgery. This study investigated how the severity and mechanism of RLN dysfunction during monitored thyroid surgery affected postoperative voice. This retrospective study analyzed 1021 patients that received standardized monitored thyroidectomy. Patients had post-dissection RLN(R2) signal <50%, 50–90% and >90% decrease from pre-dissection RLN(R1) signal were classified into Group A-no/mild, B-moderate, and C-severe RLN dysfunction, respectively. Demographic characteristics, RLN injury mechanisms(mechanical/thermal) and voice analysis parameters were recorded. More patients in the group with higher severity of RLN dysfunction had malignant pathology results (A/B/C = 35%/48%/55%, p = 0.017), received neck dissection (A/B/C = 17%/31%/55%, p < 0.001), had thermal injury (p = 0.006), and had asymmetric vocal fold motion in long-term postoperative periods (A/B/C = 0%/8%/62%, p < 0.001). In postoperative periods, Group C patients had significantly worse voice outcomes in several voice parameters in comparison to Group A/B. Thermal injury was associated with larger voice impairments compared to mechanical injury. This report is the first to discuss the severity and mechanism of RLN dysfunction and postoperative voice in patients who received monitored thyroidectomy. To optimize voice and swallowing outcomes after thyroidectomy, avoiding thermal injury is mandatory, and mechanical injury must be identified early to avoid a more severe dysfunction.

Highlights

  • Recurrent laryngeal nerve (RLN) dysfunction remains a major source of morbidity after thyroid surgery

  • The RLN dysfunction during thyroid surgery can cause vocal fold paralysis (VFP), which interferes with voice and can potentially interfere with breathing and cause aspiration [1,2]

  • Use of intraoperative neuromonitoring (IONM) enables surgeons to qualify and quantify neural function in real time by observing the laryngeal EMG response evoked by electrical stimulation of the RLN or the vagus nerve (VN) [5,6,7,8]

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Summary

Introduction

Recurrent laryngeal nerve (RLN) dysfunction remains a major source of morbidity after thyroid surgery. The RLN dysfunction during thyroid surgery can cause vocal fold paralysis (VFP), which interferes with voice and can potentially interfere with breathing and cause aspiration [1,2]. If excessive RLN nerve fibers are injured during thyroid surgery, their dysfunction and lack of participation in polarization can cause postoperative VFP [3,4]. Use of IONM enables surgeons to qualify and quantify neural function in real time by observing the laryngeal EMG response evoked by electrical stimulation of the RLN or the vagus nerve (VN) [5,6,7,8]. The surgeon can use IONM to determine what surgical maneuver caused the impending or actual RLN injury. By elucidating RLN injury mechanisms and surgical pitfalls, IONM can assist surgeons in improving their surgical techniques, in predicting recovery outcomes, and in planning intra- and post-operative management [9,10,11,12]

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