Ramon Solhkhah, Justin Feintuch, Mabel Vasquez, Eamon S Thomasson, Vijay Halari, Kathleen Palmer, Morgan R Peltier
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Quick Inventory of Depressive Symptomatology (QIDS SR-16) scores were obtained from patients, before the start of the study (day 0) and again at ~90 and ~180 d. Patients in the PEER arm were classified into one of 4 groups depending on if the report was followed throughout (RF/RF), the first 90 days only (RF/RNF), the second 90 days only (RNF/RF), or not at all (RNF/RNF). Outcomes were then compared with controls whose physician performed the EEG and submitted data but did not receive the PEER report.</p><p><strong>Results: </strong>Patients in the controls, RF/RF and RNF/RNF groups had fewer depressive symptoms at 90 and 180 days, but the response was significantly stronger for patients in the RF/RF group. Lower rates of suicidal ideation were also noted in the RF/RF group than the control group at 90 and 180 days of treatment.</p><p><strong>Conclusion: </strong>Computational analysis of EEG patterns may augment physicians' skills at selecting medications for the patients.</p>","PeriodicalId":15856,"journal":{"name":"Journal of Family Medicine and Primary Care","volume":"13 12","pages":"5730-5738"},"PeriodicalIF":1.1000,"publicationDate":"2024-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11709042/pdf/","citationCount":"0","resultStr":"{\"title\":\"Algorithm-informed treatment from EEG patterns improves outcomes for patients with major depressive disorder.\",\"authors\":\"Ramon Solhkhah, Justin Feintuch, Mabel Vasquez, Eamon S Thomasson, Vijay Halari, Kathleen Palmer, Morgan R Peltier\",\"doi\":\"10.4103/jfmpc.jfmpc_630_24\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objective: </strong>Selecting the right medication for major depressive disorder (MDD) is challenging, and patients are often on several medications before an effective one is found. Using patient EEG patterns with computer models to select medications is a potential solution, however, it is not widely performed. Therefore, we evaluated a commercially available EEG data analysis system to help guide medication selection in a clinical setting.</p><p><strong>Methods: </strong>Patients with MDD were recruited, and their physicians used their own judgment to select medications (Control; n = 115) or relied on computer-guided selection (PEER n = 165) of medications. Quick Inventory of Depressive Symptomatology (QIDS SR-16) scores were obtained from patients, before the start of the study (day 0) and again at ~90 and ~180 d. Patients in the PEER arm were classified into one of 4 groups depending on if the report was followed throughout (RF/RF), the first 90 days only (RF/RNF), the second 90 days only (RNF/RF), or not at all (RNF/RNF). Outcomes were then compared with controls whose physician performed the EEG and submitted data but did not receive the PEER report.</p><p><strong>Results: </strong>Patients in the controls, RF/RF and RNF/RNF groups had fewer depressive symptoms at 90 and 180 days, but the response was significantly stronger for patients in the RF/RF group. 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引用次数: 0
摘要
目的:选择正确的药物治疗重度抑郁症(MDD)是具有挑战性的,在找到有效的药物之前,患者经常服用几种药物。利用病人的脑电图模式和计算机模型来选择药物是一个潜在的解决方案,然而,它并没有被广泛应用。因此,我们评估了一个市售的脑电图数据分析系统,以帮助指导临床环境中的药物选择。方法:招募重度抑郁症患者,由其医生根据自己的判断选择药物(对照组;n = 115)或依赖计算机指导选择药物(PEER n = 165)。在研究开始前(第0天)以及在~90和~180天再次获得患者的抑郁症状快速量表(QIDS SR-16)评分。PEER组的患者根据是否全程遵循报告(RF/RF)、仅前90天(RF/RNF)、仅后90天(RNF/RF)或根本不遵循报告(RNF/RNF)分为四组之一。然后将结果与医生进行脑电图并提交数据但未收到PEER报告的对照组进行比较。结果:对照组、RF/RF组和RNF/RNF组患者在90天和180天的抑郁症状较少,但RF/RF组患者的反应明显更强。在治疗90天和180天时,RF/RF组的自杀意念率也低于对照组。结论:脑电图的计算分析可以提高医生为患者选择药物的能力。
Algorithm-informed treatment from EEG patterns improves outcomes for patients with major depressive disorder.
Objective: Selecting the right medication for major depressive disorder (MDD) is challenging, and patients are often on several medications before an effective one is found. Using patient EEG patterns with computer models to select medications is a potential solution, however, it is not widely performed. Therefore, we evaluated a commercially available EEG data analysis system to help guide medication selection in a clinical setting.
Methods: Patients with MDD were recruited, and their physicians used their own judgment to select medications (Control; n = 115) or relied on computer-guided selection (PEER n = 165) of medications. Quick Inventory of Depressive Symptomatology (QIDS SR-16) scores were obtained from patients, before the start of the study (day 0) and again at ~90 and ~180 d. Patients in the PEER arm were classified into one of 4 groups depending on if the report was followed throughout (RF/RF), the first 90 days only (RF/RNF), the second 90 days only (RNF/RF), or not at all (RNF/RNF). Outcomes were then compared with controls whose physician performed the EEG and submitted data but did not receive the PEER report.
Results: Patients in the controls, RF/RF and RNF/RNF groups had fewer depressive symptoms at 90 and 180 days, but the response was significantly stronger for patients in the RF/RF group. Lower rates of suicidal ideation were also noted in the RF/RF group than the control group at 90 and 180 days of treatment.
Conclusion: Computational analysis of EEG patterns may augment physicians' skills at selecting medications for the patients.