{"title":"肠易激综合征的心理决定因素及其对生活质量的影响:机器学习方法。","authors":"Elham Saeedinia, Hamid Poursharifi, Fereshte Momeni, Mohsen Vahedi, Amir Sadeghi, Mansour Abdi, Ramin Ghahremani","doi":"10.22037/ghfbb.v18i1.3082","DOIUrl":null,"url":null,"abstract":"<p><strong>Aim: </strong>This study examined the associations between psychosocial factors, Irritable bowel syndrome (IBS) diagnosis, and quality of life (QOL) in both control and IBS groups. Additionally, we explored the potential influence of psychosocial factors on the onset of IBS and developed a machine-learning model for IBS prediction.</p><p><strong>Background: </strong>IBS is a prevalent gastrointestinal disorder, with various factors predicting its severity and associated symptoms.</p><p><strong>Methods: </strong>Through convenience sampling, a cross-sectional study recruited participants diagnosed with IBS (n=134) and healthy controls (n=150) from Arak Gastroenterology Clinics. Linear regression assessed the impact of psychosocial factors on IBS symptom severity and QOL. Logistic regression analyzed the association of these factors with IBS onset. Machine learning algorithms were used to predict IBS based on psychosocial features. Instruments include IBS-SSS, IBS-QOL, Toronto Alexithymia Scale (TAS-20), Visceral Sensitivity Index (VSI), and Pain Catastrophe Scale (PCS).</p><p><strong>Results: </strong>A total of 284 participants (61.27% females) were recruited in the study, with a mean age of 36.48±10.75 years. Compared to controls, IBS patients exhibited significantly higher scores on measures of pain catastrophizing scale (PCS, 40.95 vs. 27.73), somatization (13.91 vs. 6.49), and alexithymia (60.23 vs. 54.71) as well as lower VSI (40.54 vs. 72.10). For those with IBS, only difficulty identifying feelings and somatization remained associated with worse symptoms, while VSI presented an inverse correlation. Psychological factors were inversely related to QOL. Elevated levels of alexithymia (OR 1.06; 95% CI 0.48, 1.63), somatization (OR 1.80; 95%CI 1.12, 2.48), and PCS (OR 1.70; 95% CI 1.30, 2.10) were associated with a higher chance of developing IBS, while higher VSI (OR -1.65; 95% CI -1.89, -1.42) was protective. Among machine learning models, logistic regression based on these factors (excluding alexithymia) and age achieved good performance (AUC: 0.86, 95% CI: 0.78-0.94; Accuracy: 0.83, 95% CI: 0.73-0.90) in predicting IBS onset.</p><p><strong>Conclusion: </strong>Psychological factors were linked to worse IBS symptoms and quality of life. A machine learning model for IBS prediction presented promising results.</p>","PeriodicalId":12636,"journal":{"name":"Gastroenterology and Hepatology From Bed to Bench","volume":"18 1","pages":"100-114"},"PeriodicalIF":0.0000,"publicationDate":"2025-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12301535/pdf/","citationCount":"0","resultStr":"{\"title\":\"Psychological determinants of irritable bowel syndrome and its impact on quality of life: a machine learning approaches.\",\"authors\":\"Elham Saeedinia, Hamid Poursharifi, Fereshte Momeni, Mohsen Vahedi, Amir Sadeghi, Mansour Abdi, Ramin Ghahremani\",\"doi\":\"10.22037/ghfbb.v18i1.3082\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Aim: </strong>This study examined the associations between psychosocial factors, Irritable bowel syndrome (IBS) diagnosis, and quality of life (QOL) in both control and IBS groups. Additionally, we explored the potential influence of psychosocial factors on the onset of IBS and developed a machine-learning model for IBS prediction.</p><p><strong>Background: </strong>IBS is a prevalent gastrointestinal disorder, with various factors predicting its severity and associated symptoms.</p><p><strong>Methods: </strong>Through convenience sampling, a cross-sectional study recruited participants diagnosed with IBS (n=134) and healthy controls (n=150) from Arak Gastroenterology Clinics. Linear regression assessed the impact of psychosocial factors on IBS symptom severity and QOL. Logistic regression analyzed the association of these factors with IBS onset. Machine learning algorithms were used to predict IBS based on psychosocial features. Instruments include IBS-SSS, IBS-QOL, Toronto Alexithymia Scale (TAS-20), Visceral Sensitivity Index (VSI), and Pain Catastrophe Scale (PCS).</p><p><strong>Results: </strong>A total of 284 participants (61.27% females) were recruited in the study, with a mean age of 36.48±10.75 years. Compared to controls, IBS patients exhibited significantly higher scores on measures of pain catastrophizing scale (PCS, 40.95 vs. 27.73), somatization (13.91 vs. 6.49), and alexithymia (60.23 vs. 54.71) as well as lower VSI (40.54 vs. 72.10). For those with IBS, only difficulty identifying feelings and somatization remained associated with worse symptoms, while VSI presented an inverse correlation. Psychological factors were inversely related to QOL. Elevated levels of alexithymia (OR 1.06; 95% CI 0.48, 1.63), somatization (OR 1.80; 95%CI 1.12, 2.48), and PCS (OR 1.70; 95% CI 1.30, 2.10) were associated with a higher chance of developing IBS, while higher VSI (OR -1.65; 95% CI -1.89, -1.42) was protective. Among machine learning models, logistic regression based on these factors (excluding alexithymia) and age achieved good performance (AUC: 0.86, 95% CI: 0.78-0.94; Accuracy: 0.83, 95% CI: 0.73-0.90) in predicting IBS onset.</p><p><strong>Conclusion: </strong>Psychological factors were linked to worse IBS symptoms and quality of life. 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引用次数: 0
摘要
目的:本研究探讨了对照组和IBS组的心理社会因素、肠易激综合征(IBS)诊断和生活质量(QOL)之间的关系。此外,我们探索了心理社会因素对肠易激综合征发病的潜在影响,并开发了一种用于肠易激综合征预测的机器学习模型。背景:肠易激综合征是一种常见的胃肠疾病,多种因素可预测其严重程度和相关症状。方法:通过方便抽样,横断面研究从Arak胃肠病学诊所招募了诊断为IBS的参与者(n=134)和健康对照组(n=150)。线性回归评估心理社会因素对IBS症状严重程度和生活质量的影响。Logistic回归分析这些因素与肠易激综合征发病的关系。机器学习算法用于基于心理社会特征预测肠易激综合征。仪器包括IBS-SSS、IBS-QOL、多伦多述情障碍量表(TAS-20)、内脏敏感性指数(VSI)、疼痛突变量表(PCS)。结果:共纳入研究对象284人,女性61.27%,平均年龄36.48±10.75岁。与对照组相比,IBS患者在疼痛灾难量表(PCS, 40.95 vs. 27.73)、躯体化(13.91 vs. 6.49)和述情障碍(60.23 vs. 54.71)方面的得分明显更高,VSI (40.54 vs. 72.10)也较低。对于肠易激综合征患者,只有难以识别感觉和躯体化与更严重的症状有关,而VSI呈负相关。心理因素与生活质量呈负相关。述情障碍水平升高(OR 1.06;95% CI 0.48, 1.63),躯体化(OR 1.80;95%CI 1.12, 2.48)和PCS (OR 1.70;95% CI 1.30, 2.10)与发生IBS的几率较高相关,而较高的VSI (OR -1.65;95% CI(-1.89, -1.42)具有保护作用。在机器学习模型中,基于这些因素(不包括述情障碍)和年龄的逻辑回归取得了良好的表现(AUC: 0.86, 95% CI: 0.78-0.94;预测肠易激综合征发病的准确度:0.83,95% CI: 0.73-0.90)。结论:心理因素与IBS症状恶化和生活质量有关。一种用于IBS预测的机器学习模型呈现出令人鼓舞的结果。
Psychological determinants of irritable bowel syndrome and its impact on quality of life: a machine learning approaches.
Aim: This study examined the associations between psychosocial factors, Irritable bowel syndrome (IBS) diagnosis, and quality of life (QOL) in both control and IBS groups. Additionally, we explored the potential influence of psychosocial factors on the onset of IBS and developed a machine-learning model for IBS prediction.
Background: IBS is a prevalent gastrointestinal disorder, with various factors predicting its severity and associated symptoms.
Methods: Through convenience sampling, a cross-sectional study recruited participants diagnosed with IBS (n=134) and healthy controls (n=150) from Arak Gastroenterology Clinics. Linear regression assessed the impact of psychosocial factors on IBS symptom severity and QOL. Logistic regression analyzed the association of these factors with IBS onset. Machine learning algorithms were used to predict IBS based on psychosocial features. Instruments include IBS-SSS, IBS-QOL, Toronto Alexithymia Scale (TAS-20), Visceral Sensitivity Index (VSI), and Pain Catastrophe Scale (PCS).
Results: A total of 284 participants (61.27% females) were recruited in the study, with a mean age of 36.48±10.75 years. Compared to controls, IBS patients exhibited significantly higher scores on measures of pain catastrophizing scale (PCS, 40.95 vs. 27.73), somatization (13.91 vs. 6.49), and alexithymia (60.23 vs. 54.71) as well as lower VSI (40.54 vs. 72.10). For those with IBS, only difficulty identifying feelings and somatization remained associated with worse symptoms, while VSI presented an inverse correlation. Psychological factors were inversely related to QOL. Elevated levels of alexithymia (OR 1.06; 95% CI 0.48, 1.63), somatization (OR 1.80; 95%CI 1.12, 2.48), and PCS (OR 1.70; 95% CI 1.30, 2.10) were associated with a higher chance of developing IBS, while higher VSI (OR -1.65; 95% CI -1.89, -1.42) was protective. Among machine learning models, logistic regression based on these factors (excluding alexithymia) and age achieved good performance (AUC: 0.86, 95% CI: 0.78-0.94; Accuracy: 0.83, 95% CI: 0.73-0.90) in predicting IBS onset.
Conclusion: Psychological factors were linked to worse IBS symptoms and quality of life. A machine learning model for IBS prediction presented promising results.