Hasanpour Hesam, Ghavamizadeh Meibodi Ramak, Navi Keivan, Shams Jamal, Asadi Sareh, Ahmadiani Abolhassan
Faculty of Computer Science and Engineering, Shahid Beheshti University, Tehran, Iran.
Behavioral Research Center, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Neuropsychiatr Dis Treat. 2019 Apr 10;15:895-904. doi: 10.2147/NDT.S200569. eCollection 2019.
Obsessive-compulsive disorder (OCD) is a debilitating psychiatric disorder characterized by intrusive thoughts or repetitive behaviors. Clinicians use serotonin reuptake inhibitors (SRIs) for OCD treatment, but 40%-60% of the patients do not respond to them adequately. Here, we described an association rule mining approach for treatment response prediction using an Iranian OCD data set.
Three hundred and thirty OCD patients fulfilling criteria were initially included, but 151 subjects completed their pharmacotherapy which was defined as 12-week treatment with fluvoxamine (150-300 mg). Treatment response was considered as >35% reduction in the Yale-Brown Obsessive Compulsive Scale (Y-BOCS) score. Apriori algorithm was applied to the OCD data set for extraction of the association rules predicting response to fluvoxamine pharmacotherapy in OCD patients. We considered the association of each attribute with treatment response using interestingness measures and found important attributes that associated with treatment response.
Results showed that low obsession and compulsion severities, family history of mental illness, illness duration less than 5 years, being married, and female were the most associated variables with responsiveness to fluvoxamine pharmacotherapy. Meanwhile, if an OCD patient reported a family history of mental illness and his/her illness duration was less than 5 years, he/she responded to 12-week fluvoxamine pharmacotherapy with the probability of 91%. We also found useful and applicable rules for resistant and refractory patients.
This is the first study where association rule mining approach was used to extract predicting rules for treatment response in OCD. Application of this method in personalized medicine may help clinicians in taking the right therapeutic decision.
强迫症(OCD)是一种使人衰弱的精神障碍,其特征为侵入性思维或重复行为。临床医生使用5-羟色胺再摄取抑制剂(SRIs)治疗强迫症,但40%-60%的患者对其反应不佳。在此,我们描述了一种使用伊朗强迫症数据集进行治疗反应预测的关联规则挖掘方法。
最初纳入330例符合标准的强迫症患者,但151名受试者完成了药物治疗,药物治疗定义为用氟伏沙明(150-300mg)进行为期12周的治疗。治疗反应被定义为耶鲁-布朗强迫症量表(Y-BOCS)评分降低>35%。将Apriori算法应用于强迫症数据集,以提取预测强迫症患者对氟伏沙明药物治疗反应的关联规则。我们使用趣味性度量来考虑每个属性与治疗反应的关联,并找出与治疗反应相关的重要属性。
结果显示,低强迫观念和强迫行为严重程度、精神疾病家族史、病程小于5年、已婚和女性是与氟伏沙明药物治疗反应最相关的变量。同时,如果一名强迫症患者有精神疾病家族史且病程小于5年,那么他/她对为期12周的氟伏沙明药物治疗有反应的概率为91%。我们还为难治性和顽固性患者找到了有用且适用的规则。
这是第一项使用关联规则挖掘方法来提取强迫症治疗反应预测规则的研究。该方法在个性化医疗中的应用可能有助于临床医生做出正确的治疗决策。