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Machine Learning Algorithm-Based Analysis of Efficacy of Pulmonary Surfactant Combined with Mucosolvan in Meconium Aspiration Syndrome of Newborns through Ultrasonic Images

机译:基于机器学习算法的肺表面活性剂疗效分析与粘液糖五通过超声图像结合新生儿迁移术中的粘液糖

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Objective . The study aimed to explore the efficacy of pulmonary surfactant (PS) combined with Mucosolvan in the diagnosis of meconium aspiration syndrome (MAS) in newborns through ultrasonic images of lung based on machine learning. Methods . 138 cases of infants with MAS were selected as the research subjects and randomly divided into PS group ( n ?=?46), Mucosolvan group ( n ?=?46), and combination group ( n ?=?46). Then, ultrasonic images based on machine learning algorithm were used for examination. On the basis of conventional treatment, the PS group accepted intratracheal PS drip treatment with 100?mg/kg. For the Mucosolvan group, 7.5?mg/kg of Mucosolvan was added with 50?g/L glucose, which was diluted to 3?mL. Then, the mixture was injected intravenously with a micropump for more than 5?min. The combination group received combined treatment of PS and Mucosolvan. If there was no relief or the symptoms aggravated after 12?h of PS treatment, the patient should be treated again. 7.5?mg/kg/d of Mucosolvan was given for 7 days. Mechanical ventilation time, hospitalization time, oxygenation index (OI) before treatment, at 3?d and at 7?d after treatment, and arterial/alveolar oxygen ratio (a/APO 2 ) of the three groups were detected and compared. Besides, in-hospital mortality and complication rate of the three groups were statistically compared. Results . Ultrasonic image edge detection based on machine learning algorithm was more condensed and better than Sobel operator. Compared with the PS group and the Mucosolvan group, treatment efficiency, OI at 3?d and at 7?d after treatment, and a/APO 2 of combination group were increased. Mechanical ventilation time and hospitalization time of the combination group were shortened, and mortality rate of the combination group was reduced ( ? ?0.05). Compared with the situation before treatment, OI at 3?d and at 7?d after treatment and a/APO 2 of the combination group were increased, and OI at 7?d after treatment and a/APO 2 of the PS group and the Mucosolvan group were increased ( ? ?0.05). Curative effect, mechanical ventilation time, hospitalization time, OI before and after treatment, a/APO 2 , and mortality rate during hospitalization of the PS group and the Mucosolvan group had no significant difference ( ? ?0.05). There was no significant difference in the complications rates in the three groups ( ? ?0.05). Conclusion . Pulmonary ultrasound based on machine learning algorithm can be used in the diagnosis of MAS in neonates. PS combined with Mucosolvan is feasible and safe in treating neonatal MAS and effectively improves the pulmonary oxygenation function. Therefore, it is worthy of clinical application.
机译:客观的 。该研究旨在探讨肺表面活性剂(PS)与粘膜溶解在新生儿诊断中,通过基于机器学习的超声图像通过超声图像探讨新生儿的诊断中的诊断。方法 。选择138例患有MAS的婴儿作为研究受试者,随机分为PS组(N?=α46),粘膜组(n?=α46)和组合组(n?=?46)。然后,基于机器学习算法的超声图像用于检查。在常规治疗的基础上,PS组接受100μmg/ kg的肿瘤内PS滴水处理。对于粘膜溶解组,加入7.5〜Mg / kg粘膜糖醇,用50μlg/ l葡萄糖加入,将其稀释至3×ml。然后,将混合物静脉内注射用微泵以超过5?min。组合组接受了PS和粘膜的组合治疗。如果在PS治疗中没有缓解或症状加重,患者应再次治疗。 7.5?mg / kg / d粘豆醇含量为7天。在处理后,在处理前,在治疗前的洗涤时间,住院时间,氧合指数(OI),检测到三组的动脉/肺泡氧比(A / APO 2)。此外,三组的医院死亡率和并发症率在统计上进行了统计学。结果 。基于机器学习算法的超声波图像边缘检测更加浓缩,比Sobel操作员更好。与PS组和粘液糖醛组相比,治疗效率,3〜D和7≤d的治疗后,增加组合组的A / APO 2。缩短了组合组的机械通气时间和住院时间,并降低了组合组的死亡率(?0.05)。与治疗前的情况相比,治疗后3〜D和7≤D的情况相比,组合组的A / apo 2在治疗后的7℃和7℃下的oi和PS组的A / APO 2和PS组粘膜素组增加(?0.05)。治疗前后的疗效,机械通风时间,住院时间,oi,pS组和粘液糖类期间期间的死亡率和死亡率率没有显着差异(?&?0.05)。三组的并发症率没有显着差异(?&?0.05)。结论 。基于机器学习算法的肺部超声可用于诊断新生儿中的MAS。 PS与粘膜醇相结合可行和安全在治疗新生儿MAS并有效改善肺氧化功能。因此,值得临床应用。

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