Rebecca H K Emanuel, Paul D Docherty, Helen Lunt, Rebecca E Campbell
{"title":"多囊卵巢综合征(PCOS)论坛的用户如何看待他们尝试的治疗方法:使用机器学习分析治疗情绪。","authors":"Rebecca H K Emanuel, Paul D Docherty, Helen Lunt, Rebecca E Campbell","doi":"10.1007/s13246-025-01539-9","DOIUrl":null,"url":null,"abstract":"<p><p>Polycystic ovary syndrome (PCOS) is a heterogenous condition that is estimated to effect up to 21% of reproductive aged people with ovaries. In previous work, a dataset of PCOS features was derived from approximately 100,000 PCOS subreddit users via machine learning. In this study, an exploration of treatment response within the PCOS subreddit was undertaken with the derived dataset. The treatment or symptom features in the dataset had sentiment labels indicating when a treatment was perceived to improve or worsen a condition or symptom. When different features were mentioned within two sentences of each other without conflicting sentiment, it could be assumed that they were related. This assumption allowed for a broad analysis of the perceived effect of popular treatments on the most frequently mentioned symptoms. In general, lifestyle changes and supplements were the most positively regarded, while contraceptives were frequently associated with considerable negative sentiment. For PCOS weight loss, unspecified dieting (RR 5.19, 95% CI 3.28-8.19, n = 99) and intermittent fasting (RR 33.50, 95% CI 8.54-131.34, n = 69) were the most successful interventions. Inositol was associated with a large range of favourable outcomes and was one of the few treatments associated with improved mental health [depression (RR 4.25, 95% CI 1.72-10.51, n = 21), anxiety (RR 5.83, 95% CI 2.76-12.35, n = 41) and mood issues (RR 25.00, 95% CI 3.65-171.10, n = 26)]. Combined oral contraceptive pills as a whole were strongly associated with adverse effects such as worsening depression (RR 0.06, 95% CI 0.02-0.25, n = 33), anxiety (RR 0.10, 95% CI 0.03-0.36, n = 23), fatigue (RR 0, n = 45) and low libido (RR 0.03, 95% CI 0.01-0.24, n = 30). However, combined contraceptives with anti-androgenic progestins were associated with more favourable experiences. This study demonstrates the utility of machine learning to derive measurable patient experience data from an internet forum. While patient experience data derived using machine learning is not a substitute for traditional clinical trials, it is useful for mass validation and hypothesis generation. 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In previous work, a dataset of PCOS features was derived from approximately 100,000 PCOS subreddit users via machine learning. In this study, an exploration of treatment response within the PCOS subreddit was undertaken with the derived dataset. The treatment or symptom features in the dataset had sentiment labels indicating when a treatment was perceived to improve or worsen a condition or symptom. When different features were mentioned within two sentences of each other without conflicting sentiment, it could be assumed that they were related. This assumption allowed for a broad analysis of the perceived effect of popular treatments on the most frequently mentioned symptoms. In general, lifestyle changes and supplements were the most positively regarded, while contraceptives were frequently associated with considerable negative sentiment. For PCOS weight loss, unspecified dieting (RR 5.19, 95% CI 3.28-8.19, n = 99) and intermittent fasting (RR 33.50, 95% CI 8.54-131.34, n = 69) were the most successful interventions. Inositol was associated with a large range of favourable outcomes and was one of the few treatments associated with improved mental health [depression (RR 4.25, 95% CI 1.72-10.51, n = 21), anxiety (RR 5.83, 95% CI 2.76-12.35, n = 41) and mood issues (RR 25.00, 95% CI 3.65-171.10, n = 26)]. Combined oral contraceptive pills as a whole were strongly associated with adverse effects such as worsening depression (RR 0.06, 95% CI 0.02-0.25, n = 33), anxiety (RR 0.10, 95% CI 0.03-0.36, n = 23), fatigue (RR 0, n = 45) and low libido (RR 0.03, 95% CI 0.01-0.24, n = 30). However, combined contraceptives with anti-androgenic progestins were associated with more favourable experiences. This study demonstrates the utility of machine learning to derive measurable patient experience data from an internet forum. 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引用次数: 0
摘要
多囊卵巢综合征(PCOS)是一种异质性疾病,估计影响多达21%的育龄卵巢患者。在之前的工作中,通过机器学习从大约100,000个PCOS子reddit用户中获得了PCOS特征数据集。在本研究中,利用衍生数据集对PCOS子reddit中的治疗反应进行了探索。数据集中的治疗或症状特征具有情绪标签,表明何时认为治疗可以改善或恶化病情或症状。当不同的特征在两句话内被提及,并且没有相互冲突的情绪时,可以认为它们是相关的。这一假设允许对常见治疗方法对最常提到的症状的感知效果进行广泛分析。总的来说,生活方式的改变和补充得到了最积极的评价,而避孕往往与相当大的负面情绪有关。对于PCOS减肥,未指定的节食(RR 5.19, 95% CI 3.28-8.19, n = 99)和间歇性禁食(RR 33.50, 95% CI 8.54-131.34, n = 69)是最成功的干预措施。肌醇与广泛的有利结果相关,并且是少数与改善心理健康相关的治疗方法之一[抑郁(RR 4.25, 95% CI 1.72-10.51, n = 21),焦虑(RR 5.83, 95% CI 2.76-12.35, n = 41)和情绪问题(RR 25.00, 95% CI 3.65-171.10, n = 26)]。复方口服避孕药总体上与不良反应密切相关,如加重抑郁(RR 0.06, 95% CI 0.02-0.25, n = 33)、焦虑(RR 0.10, 95% CI 0.03-0.36, n = 23)、疲劳(RR 0, n = 45)和性欲低下(RR 0.03, 95% CI 0.01-0.24, n = 30)。然而,联合避孕药与抗雄激素孕激素与更有利的经验。本研究展示了机器学习从互联网论坛中获得可测量的患者体验数据的效用。虽然使用机器学习获得的患者体验数据不能替代传统的临床试验,但它对大规模验证和假设生成很有用。本文可作为临床网络论坛研究这一范畴的首次探索。
What do users in a polycystic ovary syndrome (PCOS) forum think about the treatments they tried: Analysing treatment sentiment using machine learning.
Polycystic ovary syndrome (PCOS) is a heterogenous condition that is estimated to effect up to 21% of reproductive aged people with ovaries. In previous work, a dataset of PCOS features was derived from approximately 100,000 PCOS subreddit users via machine learning. In this study, an exploration of treatment response within the PCOS subreddit was undertaken with the derived dataset. The treatment or symptom features in the dataset had sentiment labels indicating when a treatment was perceived to improve or worsen a condition or symptom. When different features were mentioned within two sentences of each other without conflicting sentiment, it could be assumed that they were related. This assumption allowed for a broad analysis of the perceived effect of popular treatments on the most frequently mentioned symptoms. In general, lifestyle changes and supplements were the most positively regarded, while contraceptives were frequently associated with considerable negative sentiment. For PCOS weight loss, unspecified dieting (RR 5.19, 95% CI 3.28-8.19, n = 99) and intermittent fasting (RR 33.50, 95% CI 8.54-131.34, n = 69) were the most successful interventions. Inositol was associated with a large range of favourable outcomes and was one of the few treatments associated with improved mental health [depression (RR 4.25, 95% CI 1.72-10.51, n = 21), anxiety (RR 5.83, 95% CI 2.76-12.35, n = 41) and mood issues (RR 25.00, 95% CI 3.65-171.10, n = 26)]. Combined oral contraceptive pills as a whole were strongly associated with adverse effects such as worsening depression (RR 0.06, 95% CI 0.02-0.25, n = 33), anxiety (RR 0.10, 95% CI 0.03-0.36, n = 23), fatigue (RR 0, n = 45) and low libido (RR 0.03, 95% CI 0.01-0.24, n = 30). However, combined contraceptives with anti-androgenic progestins were associated with more favourable experiences. This study demonstrates the utility of machine learning to derive measurable patient experience data from an internet forum. While patient experience data derived using machine learning is not a substitute for traditional clinical trials, it is useful for mass validation and hypothesis generation. This paper may serve as the first exploration into this category of clinical internet forum research.