हमारा समूह 1000 से अधिक वैज्ञानिक सोसायटी के सहयोग से हर साल संयुक्त राज्य अमेरिका, यूरोप और एशिया में 3000+ वैश्विक सम्मेलन श्रृंखला कार्यक्रम आयोजित करता है और 700+ ओपन एक्सेस जर्नल प्रकाशित करता है जिसमें 50000 से अधिक प्रतिष्ठित व्यक्तित्व, प्रतिष्ठित वैज्ञानिक संपादकीय बोर्ड के सदस्यों के रूप में शामिल होते हैं।
ओपन एक्सेस जर्नल्स को अधिक पाठक और उद्धरण मिल रहे हैं
700 जर्नल और 15,000,000 पाठक प्रत्येक जर्नल को 25,000+ पाठक मिल रहे हैं
Germano Almeida
Cancer remains a significant global health concern, and the development of effective anticancer medications is crucial for improving patient outcomes. However, predicting the efficacy of different anticancer drugs is a complex task due to the heterogeneity of cancer and the multifactorial nature of drug response. In this study, we propose a novel approach that combines multi-target regression and support vector regression analysis to accurately predict the efficacy of various anticancer medications. The selection of appropriate anticancer medications for individual patients is a challenging task. While several predictive models have been developed, most of them focus on single drugs and fail to capture the intricate relationships between multiple drugs and their targets. To overcome these limitations, we present a comprehensive framework that utilizes multi-target regression and support vector regression analysis for precise prediction of anticancer medication efficacy. To further enhance the predictive performance, we integrate support vector regression analysis into our framework. Support vector regression is a powerful machine learning algorithm that can effectively handle high-dimensional datasets and nonlinear relationships. It allows us to build robust models that can accurately predict anticancer medication efficacy.