caopornx在线超碰免费-欧美亚洲性色影视在线-人妻无码AV一区二区三区-欧美日韩国产一区二区三区播放-青青草原精品国产亚洲AV-日本黄A级A片国产免费-亚洲精品一区久久久久久-成人18禁在线WWW免费视频

論文
您當(dāng)前的位置 :
Prediction of Solubility of Proteins in Escherichia coli Based on Functional and Structural Features Using Machine Learning Methods
論文作者 Huang, FM; Gao, Q; Zhou, XC; Guo, W; Feng, KY; Zhu, L; Huang, T; Cai, YD
期刊/會議名稱 PROTEIN JOURNAL
論文年度 2024
論文類別
摘要 Protein solubility is a critical parameter that determines the stability, activity, and functionality of proteins, with broad and far-reaching implications in biotechnology and biochemistry. Accurate prediction and control of protein solubility are essential for successful protein expression and purification in research and industrial settings. This study gathered information on soluble and insoluble proteins. In characterizing the proteins, they were mapped to STRING and characterized by functional and structural features. All functional/structural features were integrated to create a 5768-dimensional binary vector to encode proteins. Seven feature-ranking algorithms were employed to analyze the functional/structural features, yielding seven feature lists. These lists were subjected to the incremental feature selection, incorporating four classification algorithms, one by one to build effective classification models and identify functional/structural features with classification-related importance. Some essential functional/structural features used to differentiate between soluble and insoluble proteins were identified, including GO:0009987 (intercellular communication) and GO:0022613 (ribonucleoprotein complex biogenesis). The best classification model using support vector machine as the classification algorithm and 295 optimized functional/structural features generated the F1 score of 0.825, which can be a powerful tool to differentiate soluble proteins from insoluble proteins.
5
43
影響因子 1.9
99国产精品久久久久久久成人| 国产精品,欧美精品,日韩精品| 日韩精品性爱| 99re在线精品视频| 99久久精品国产色欲| 人人妻人人澡人人爽人人精品图片| 欧美激情国产精品日韩| 99精品一区二区三区| 国产人妻 精品无码免费| 9191成人精品久久| 91精品福利视频| 蜜臀精品在线| 天堂精品在线| 91麻豆精品国产| R级无码中文视频在线观看 | 亚洲国产中文免费综合网| 婷婷基地五月中文字幕| 精品无码中文区| 美日韩精品少妇一区| 国产洲精品美女久久久| 少妇精品少妇色综合网|