Hyun Kwanyong, Kim Jae Jun, Choi Won Kyu, Kim Yoon Ho, Han Sang Chul
Department of Thoracic and Cardiovascular Surgery, St. Vincent's Hospital, College of Medicine, The Catholic University of Korea, Gyeonggi-do, Republic of Korea.
Department of Thoracic and Cardiovascular Surgery, Uijeongbu St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Gyeonggi-do, Republic of Korea.
J Thorac Dis. 2024 Jan 30;16(1):311-320. doi: 10.21037/jtd-23-1430. Epub 2024 Jan 29.
Chest wall re-depression after bar removal (BR) in pectus excavatum (PE) is insufficiently investigated. However, it is not easy to investigate chest wall re-depression due to its multifactorial characteristics. Herein, we investigated chest wall re-depression after BR using machine learning algorithms. To the best of my knowledge, this is the first study of chest wall re-depression after BR using machine learning algorithms.
We retrospectively reviewed 199 consecutive subjects who underwent both minimally invasive repair of pectus excavatum (MIRPE) and BR at a single hospital from March 2012 to June 2020. We investigated attributes of chest wall re-depression and risk factors for recurrence after BR, predicted final degree and recurrence of PE after BR, and suggested the optimal age at the time of MIRPE based on recurrence. Data for the chest wall re-depression were analyzed to discover differences according to age group [<10 years (early repair group; EG) ≥10 years (late repair group; LG)].
We observed no significant difference between the Haller index and radiographical pectus index (RPI) (P=0.431) and a significant correlation between Haller index and RPI (P<0.001). RPI significantly increased for the first 6 months after BR in both age groups (both P<0.001) and was maintained at 1 year after BR. RPI value of the LG were significantly higher than those of the EG for the entire period after MIRPE (P=0.041). Recurrence of PE in the LG was significantly more frequent than in the EG (P<0.001). RPI values before and after MIRPE and age group were identified as independent risk factors for recurrence after BR (P<0.001, P=0.007, and P=0.001, respectively). The linear regression model outperformed for final RPI with performance scores of mean squared error 0.198, root mean squared error 0.445, mean absolute error 0.336, and R2 0.415. In addition, the logistic regression model outperformed for predicting recurrence with performance scores of 0.865 the area under the curve, 0.884 accuracy, 0.859 F1, 0.865 precision, and 0.884 recall.
The present study shows that machine learning algorithms can provide good estimates for postoperative results in PE. An approach integrating machine learning models and readily available clinical data can be used to create other models in the thoracic surgery field.
漏斗胸(PE)中取出钢板(BR)后胸壁再次凹陷的情况尚未得到充分研究。然而,由于其多因素特性,研究胸壁再次凹陷并不容易。在此,我们使用机器学习算法研究了BR后胸壁再次凹陷的情况。据我所知,这是第一项使用机器学习算法研究BR后胸壁再次凹陷的研究。
我们回顾性分析了2012年3月至2020年6月在一家医院连续接受微创漏斗胸修复术(MIRPE)和BR的199例患者。我们研究了胸壁再次凹陷的特征以及BR后复发的危险因素,预测了BR后PE的最终程度和复发情况,并根据复发情况提出了MIRPE时的最佳年龄。分析胸壁再次凹陷的数据,以发现不同年龄组[<10岁(早期修复组;EG)≥10岁(晚期修复组;LG)]之间的差异。
我们观察到Haller指数与放射学漏斗胸指数(RPI)之间无显著差异(P=0.431),但Haller指数与RPI之间存在显著相关性(P<0.001)。两个年龄组在BR后的前6个月RPI均显著增加(均P<0.001),并在BR后1年保持稳定。在MIRPE后的整个时间段内,LG的RPI值显著高于EG(P=0.041)。LG中PE的复发明显比EG更频繁(P<0.001)。MIRPE前后的RPI值和年龄组被确定为BR后复发的独立危险因素(分别为P<0.001、P=0.007和P=0.001)。线性回归模型在预测最终RPI方面表现更佳,其性能得分包括均方误差0.198、均方根误差0.445、平均绝对误差0.336和R2 0.415。此外,逻辑回归模型在预测复发方面表现更佳,其性能得分包括曲线下面积0.865、准确率0.884、F1 0.859、精确率0.865和召回率0.884。
本研究表明,机器学习算法可以为PE的术后结果提供良好的估计。一种将机器学习模型与现成的临床数据相结合的方法可用于创建胸外科领域的其他模型。