National Repository of Grey Literature 4 records found  Search took 0.01 seconds. 
Prediction of Protein Stability upon Mutations Using Machine Learning
Malinka, František ; Martínek, Tomáš (referee) ; Bendl, Jaroslav (advisor)
This thesis describes a new approach to the detection of protein stability change upon amino acid mutations. The main goal is to create a new meta-tool, which combines the outputs of eight well-established prediction tools and due to suitable method of consensus making, it is able to improve the overall prediction accuracy. The optimal strategy of combination of outputs of these tools is found by using a various number of machine learning methods. From all tested machine learning methods, KStar showed the highest prediction accuracy on the training dataset compiled from experimentally validated mutations originating from ProTherm database. Due to this reason, it is chosen as an optimal prediction technique. The general prediction abilities is validated on the testing dataset composed of multi-point amino acid mutations extracted also from ProTherm database. Since the multi-point mutations were not used for training any of integrated tools, we suppose that such comparison is objective. As a result, the developed meta-tool based on KStar technique improves the correlation coefficient about 0.130 on the training dataset and 0.239 on the testing dataset, respectively (the comparison is being made against the most succesful integrated tool). Based on the obtained results, it is possible to claim that machine learning methods are suitable technique for the problems from area of protein predictions.
Prediction of the Effect of Amino Acid Substitutions on Secondary Structure of Proteins
Hyrš, Martin ; Vogel, Ivan (referee) ; Bendl, Jaroslav (advisor)
In this thesis I investigate the effect of amino acid substitutions on secondary structure of proteins. I found that the secondary structure is relatively resistant to mutations, some regions hold the same secondary structure, even though their sequences are very different. Since this effect was observed also for random sequences, I conclude that it is a general property of the amino acid sequence. The particular elements of secondary structures are differentially sensitive to the changes caused by mutations. Protein's sensitivity to mutations depends on the composition of its secondary structure. Some methods of secondary structure prediction are described in the introductory section.
Prediction of the Effect of Amino Acid Substitutions on Secondary Structure of Proteins
Hyrš, Martin ; Vogel, Ivan (referee) ; Bendl, Jaroslav (advisor)
In this thesis I investigate the effect of amino acid substitutions on secondary structure of proteins. I found that the secondary structure is relatively resistant to mutations, some regions hold the same secondary structure, even though their sequences are very different. Since this effect was observed also for random sequences, I conclude that it is a general property of the amino acid sequence. The particular elements of secondary structures are differentially sensitive to the changes caused by mutations. Protein's sensitivity to mutations depends on the composition of its secondary structure. Some methods of secondary structure prediction are described in the introductory section.
Prediction of Protein Stability upon Mutations Using Machine Learning
Malinka, František ; Martínek, Tomáš (referee) ; Bendl, Jaroslav (advisor)
This thesis describes a new approach to the detection of protein stability change upon amino acid mutations. The main goal is to create a new meta-tool, which combines the outputs of eight well-established prediction tools and due to suitable method of consensus making, it is able to improve the overall prediction accuracy. The optimal strategy of combination of outputs of these tools is found by using a various number of machine learning methods. From all tested machine learning methods, KStar showed the highest prediction accuracy on the training dataset compiled from experimentally validated mutations originating from ProTherm database. Due to this reason, it is chosen as an optimal prediction technique. The general prediction abilities is validated on the testing dataset composed of multi-point amino acid mutations extracted also from ProTherm database. Since the multi-point mutations were not used for training any of integrated tools, we suppose that such comparison is objective. As a result, the developed meta-tool based on KStar technique improves the correlation coefficient about 0.130 on the training dataset and 0.239 on the testing dataset, respectively (the comparison is being made against the most succesful integrated tool). Based on the obtained results, it is possible to claim that machine learning methods are suitable technique for the problems from area of protein predictions.

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