Klasik Türk Müziği Makamlarının Minör/Majör Depresyon Hastalarının Üzerindeki Duygu Değişimlerine ve Tedavi Süreçlerine Etkilerinin Beyin EEG Sinyalleri Kullanılarak Analiz Edilmesi Potansiyelinin Meta-Sentez Yöntemi ile İncelenmesi

Müzikle tedaviyi sistemli olarak ilk defa kullanan Türklerde, bu tedavi yöntemi yaklaşık 6000 yıl kadar eskiye dayanmaktadır. Modern bilimin gelişimine paralel olarak müzikle tedavi üzerine bir çok literatür çalışması gerçekleştirilmiştir. Klasik Türk Müziği makam esasına dayanan bir Türk müzik türüdür. Klasik Türk Müziği ile müzik terapisi çok eski dönemlerden itibaren uygulanmasına rağmen bu kapsamdaki uluslararası modern literatür çalışmalarının gerçekleştirilmesine ancak 2000’li yılların ikinci yarısından itibaren başlandığı görülmektedir. Müzik dinlemenin beyin EEG (Elektroensefalografi) sinyallerine etkisinin incelenmesine ilişkin ilk çalışmalar 1980’li yılların başlarında yapılmıştır. Literatürde dinlenilen müzik eserinin beğenilip beğenilmediği ya da hangi duyguları uyandırdığının beyin EEG sinyalleri ile tahmin edilmesi-sınıflandırılması yönünde birçok çalışma gerçekleştirilmiştir. Ayrıca, son yıllarda yapılan literatür çalışmaları dikkate alındığında müzik terapisinin oluşturduğu EEG sinyallerinin mühendislik analizi ile hastalığın gidişatı üzerindeki tıbbi değerlendirmelerin birlikte yapıldığı multi-disipliner literatür çalışmalarında artış görülmektedir. Müzik ile beyin EEG sinyalleri arasındaki ilişkileri inceleyen çalışmalarda kullanılan müzik eserlerinin, çalışmayı yapan ekiplerin etnik ve kültürel kökenlerinin de etkisiyle genellikle Klasik Batı Müziği, Klasik Hint Müziği, Rock Müzik, Klasik İran Müziği gibi müzik türlerinden seçildiği görülmektedir. Sınırlı sayıda olmakla birlikte Klasik Türk Müziği ile beyin EEG sinyalleri arasındaki ilişkiyi inceleyen çalışmalarda gerçekleştirilmiştir. Depresyon; uyaranlara karşı duyarlığın azalması, girişim gücünün ve kendine güvenin yiterek umutsuzluğun, karamsarlığın güçlenmesi biçiminde beliren ruhsal bozukluk hali olarak tanımlanabilir. Depresyon genel olarak majör depresyon ve minör depresyon olmak üzere iki başlıkta incelenmektedir. Sağlık Bakanlığının antidepresan kullanımına ilişkin verileri yıllık ortalama % 10 civarında bir artışa işaret etmektedir. Ayrıca, bu veriler depresyonun ülkemiz adına bir hastalık olmaktan ziyade bir halk sağlığı problemine dönüşmek üzere olduğunu açıkça ortaya koymaktadır. Bu meta-sentez çalışmasında literatür üzerinde kapsamlı bir inceleme yapılarak Klasik Türk Müziği makamlarının minör/majör depresyon hastaları üzerindeki duygu değişimlerine ve tedavi süreçlerine etkilerinin beyin EEG sinyalleri kullanılarak analiz edilmesine yönelik potansiyelinin incelenmesi ve açığa çıkarılması hedeflenmiştir. Bu kapsamda gerçekleştirilen çalışmanın araştırmacıların konu hakkında multi-disipliner çalışmalar yapmalarını teşvik edeceği ve kolaylaştıracağı değerlendirilmektedir.

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