Division of Gastrointestinal and Minimally Invasive Surgery, Department of Surgery, Carolinas Medical Center, 1025 Morehead Medical Drive Suite 300, Charlotte, NC, 28204, USA.
Department of Statistical Science, Duke University, Durham, NC, USA.
Surg Endosc. 2024 Jul;38(7):3984-3991. doi: 10.1007/s00464-024-10980-y. Epub 2024 Jun 11.
Deep learning models (DLMs) using preoperative computed tomography (CT) imaging have shown promise in predicting outcomes following abdominal wall reconstruction (AWR), including component separation, wound complications, and pulmonary failure. This study aimed to apply these methods in predicting hernia recurrence and to evaluate if incorporating additional clinical data would improve the DLM's predictive ability.
Patients were identified from a prospectively maintained single-institution database. Those who underwent AWR with available preoperative CTs were included, and those with < 18 months of follow up were excluded. Patients were separated into a training (80%) set and a testing (20%) set. A DLM was trained on the images only, and another DLM was trained on demographics only: age, sex, BMI, diabetes, and history of tobacco use. A mixed-value DLM incorporated data from both. The DLMs were evaluated by the area under the curve (AUC) in predicting recurrence.
The models evaluated data from 190 AWR patients with a 14.7% recurrence rate after an average follow up of more than 7 years (mean ± SD: 86 ± 39 months; median [Q1, Q3]: 85.4 [56.1, 113.1]). Patients had a mean age of 57.5 ± 12.3 years and were majority (65.8%) female with a BMI of 34.2 ± 7.9 kg/m. There were 28.9% with diabetes and 16.8% with a history of tobacco use. The AUCs for the imaging DLM, clinical DLM, and combined DLM were 0.500, 0.667, and 0.604, respectively.
The clinical-only DLM outperformed both the image-only DLM and the mixed-value DLM in predicting recurrence. While all three models were poorly predictive of recurrence, the clinical-only DLM was the most predictive. These findings may indicate that imaging characteristics are not as useful for predicting recurrence as they have been for other AWR outcomes. Further research should focus on understanding the imaging characteristics that are identified by these DLMs and expanding the demographic information incorporated in the clinical-only DLM to further enhance the predictive ability of this model.
使用术前计算机断层扫描(CT)成像的深度学习模型(DLM)已显示出在预测腹壁重建(AWR)后结果方面的潜力,包括分离组件、伤口并发症和肺衰竭。本研究旨在应用这些方法预测疝复发,并评估是否纳入额外的临床数据可以提高 DLM 的预测能力。
从一个前瞻性维护的单机构数据库中确定患者。纳入接受 AWR 且有可用术前 CT 的患者,并排除随访时间<18 个月的患者。患者分为训练集(80%)和测试集(20%)。仅使用图像训练 DLM,仅使用人口统计学数据(年龄、性别、BMI、糖尿病和吸烟史)训练另一个 DLM。混合值 DLM 则纳入来自两者的数据。通过曲线下面积(AUC)评估 DLM 预测复发的能力。
该模型评估了 190 例 AWR 患者的数据,这些患者在平均随访超过 7 年后复发率为 14.7%(平均±标准差:86±39 个月;中位数[Q1,Q3]:85.4[56.1,113.1])。患者的平均年龄为 57.5±12.3 岁,多数(65.8%)为女性,BMI 为 34.2±7.9kg/m。28.9%的患者患有糖尿病,16.8%的患者有吸烟史。成像 DLM、临床 DLM 和混合值 DLM 的 AUC 分别为 0.500、0.667 和 0.604。
在预测复发方面,仅临床的 DLM 优于仅图像的 DLM 和混合值 DLM。尽管所有三种模型对复发的预测都很差,但仅临床的 DLM的预测性最高。这些发现可能表明,成像特征对于预测复发并不像它们对于其他 AWR 结果那样有用。进一步的研究应集中于了解这些 DLM 识别的成像特征,并扩展纳入临床仅 DLM 的人口统计学信息,以进一步提高该模型的预测能力。