医学
乳房再造术
乳晕
社会心理的
患者满意度
外科
乳房整形术
乳腺癌
内科学
精神科
癌症
作者
Katie G. Egan,Melissa E. Cullom,Niaman Nazir,James A. Butterworth
标识
DOI:10.1097/prs.0000000000008180
摘要
Nipple reconstruction has been linked to patient satisfaction; however, there is debate about the validity of these findings in autologous breast reconstruction patients. This study hypothesized that satisfaction would increase with nipple reconstruction following autologous breast reconstruction.A comparison study was performed of autologous breast reconstruction patients. Patients completed a survey that included BREAST-Q and nipple satisfaction measures. A chart review identified reconstructive details.A total of 191 patients completed the survey (48 percent response rate), with an average age of 53.7 ± 10.0 years and follow-up time of 2.8 ± 1.5 years. Nipple-areola complex reconstruction was completed in 33 percent of patients (63 of 191). Nipple-areola complex tattoos were used most frequently [n = 37 (58 percent)], followed by local flaps [n = 10 (16 percent)], free nipple-areola complex grafts [n = 9 (14 percent)], and a combination of local flaps and tattoos [n = 7 (11 percent)]. In comparison to women who did not undergo nipple-areola complex reconstruction, women who underwent any type of nipple reconstruction had a statistically higher BREAST-Q score for Sexual Well-Being (60 ± 24 versus 50 ± 22; p = 0.01), Postoperative Satisfaction with Breasts (65 ± 11 versus 61 ± 12; p = 0.01), and Satisfaction with Surgeon (97 ± 6 versus 93 ± 16; p = 0.009). The average nipple satisfaction score was 74 ± 19. There were correlations between the nipple satisfaction score and BREAST-Q scores for Sexual Well-Being (r = 0.50; p < 0.001), Psychosocial Well-Being (r = 0.43; p < 0.001), and Postoperative Satisfaction with Breasts (r = 0.43; p < 0.001).Reconstruction of the nipple-areola complex is an important part of autologous breast reconstruction, resulting in increased sexual well-being and satisfaction with reconstructed breasts.
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