Impact of cluster C personality disorders on outcomes of acute and maintenance treatment in late-life depression.

Author: FrankEllen, HouckPatricia R, MorseJennifer Q, PilkonisPaul A, ReynoldsCharles F

Paper Details 
Original Abstract of the Article :
OBJECTIVE: Personality disorders (PDs) have been associated with poor treatment outcomes in acute treatments for late-life depression and with persistent functional impairment after recovery from an episode of depression. METHODS: Using survival analysis and mixed-effects models, the authors examin...See full text at original site
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引用元:
https://doi.org/10.1176/appi.ajgp.13.9.808

データ提供:米国国立医学図書館(NLM)

Impact of Cluster C Personality Disorders on Depression Treatment

This research delves into the vast and often challenging landscape of late-life depression. The study investigates the impact of Cluster C personality disorders, known for their anxiety-ridden tendencies, on treatment outcomes. Using survival analysis and mixed-effects models, the researchers carefully observed the effect of these personality traits on the time it takes for treatment to show results, as well as the overall effectiveness of treatment. Their findings indicate that individuals with Cluster C personality disorders tend to take longer to respond to treatment and are more likely to experience a lack of response during maintenance therapy. This is similar to a camel navigating a shifting desert landscape; the path to recovery can be longer and more unpredictable for those with these personality traits. The study also suggests that the combination of Cluster C personality disorders and persistent depressive symptoms can lead to a decline in functional abilities, even after an initial episode of depression has been overcome.

Cluster C Personality Disorders and Treatment Challenges

The study reveals a correlation between Cluster C personality disorders and a longer time to response during acute treatment. Moreover, individuals with these personality disorders are more likely to not respond to continuation or maintenance treatment. This pattern suggests that the presence of these disorders can create significant obstacles in the path towards recovery. Think of it as a camel trying to navigate a desert with hidden obstacles, where the journey to the oasis becomes more arduous.

Implications for Late-Life Depression Treatment

This research emphasizes the importance of screening for personality disorders, especially Cluster C, in individuals receiving treatment for late-life depression. Identifying these disorders early on allows clinicians to tailor their approach and potentially optimize treatment outcomes. It’s like having a map of the desert; knowing the potential obstacles allows for better navigation. Additionally, the study highlights the need for ongoing monitoring for functional decline, even after an initial episode of depression has been treated. This is crucial for ensuring the long-term well-being of patients, much like a camel needs to be carefully monitored for dehydration in a harsh desert environment.

Dr.Camel's Conclusion

This study sheds light on the complex interplay between personality disorders and late-life depression. Just as a camel’s journey through the desert is influenced by the terrain and the weather, individuals with Cluster C personality disorders face unique challenges in their journey towards recovery. By understanding these challenges, clinicians can develop more effective treatment strategies and support patients in achieving lasting well-being.

Date :
  1. Date Completed 2006-02-06
  2. Date Revised 2022-03-16
Further Info :

Pubmed ID

16166411

DOI: Digital Object Identifier

10.1176/appi.ajgp.13.9.808

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SNS
PICO Info
in preparation
Languages

English

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