<?xml version="1.0" encoding="utf-8" standalone="no"?>
<dublin_core schema="dc">
<dcvalue element="contributor" qualifier="author">Ko,&#x20;Young-Joon</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Dohyeon</dcvalue>
<dcvalue element="contributor" qualifier="author">Muvva,&#x20;Charuvaka</dcvalue>
<dcvalue element="contributor" qualifier="author">Lee,&#x20;Won-Kyu</dcvalue>
<dcvalue element="contributor" qualifier="author">Seo,&#x20;Moon-Hyeong</dcvalue>
<dcvalue element="contributor" qualifier="author">Park,&#x20;Keunwan</dcvalue>
<dcvalue element="date" qualifier="accessioned">2025-11-21T00:59:16Z</dcvalue>
<dcvalue element="date" qualifier="available">2025-11-21T00:59:16Z</dcvalue>
<dcvalue element="date" qualifier="created">2025-11-11</dcvalue>
<dcvalue element="date" qualifier="issued">2025-09</dcvalue>
<dcvalue element="identifier" qualifier="issn">0141-8130</dcvalue>
<dcvalue element="identifier" qualifier="uri">https:&#x2F;&#x2F;pubs.kist.re.kr&#x2F;handle&#x2F;201004&#x2F;153574</dcvalue>
<dcvalue element="description" qualifier="abstract">Despite&#x20;the&#x20;essential&#x20;roles&#x20;of&#x20;proteins&#x20;in&#x20;biological&#x20;systems,&#x20;optimizing&#x20;them&#x20;to&#x20;meet&#x20;multiple&#x20;functional&#x20;requirements,&#x20;such&#x20;as&#x20;thermal&#x20;stability,&#x20;binding&#x20;affinity,&#x20;and&#x20;expression&#x20;yield,&#x20;remains&#x20;challenging&#x20;due&#x20;to&#x20;structural&#x20;complexity&#x20;and&#x20;the&#x20;resource-intensive&#x20;nature&#x20;of&#x20;traditional&#x20;methods.&#x20;To&#x20;address&#x20;this,&#x20;we&#x20;propose&#x20;an&#x20;iterative&#x20;machine&#x20;learning&#x20;(ML)-guided&#x20;approach&#x20;for&#x20;protein&#x20;engineering&#x20;that&#x20;efficiently&#x20;explores&#x20;the&#x20;protein&#x20;sequence&#x20;space&#x20;while&#x20;reducing&#x20;reliance&#x20;on&#x20;costly&#x20;characterization.&#x20;Our&#x20;method&#x20;uses&#x20;ML&#x20;models&#x20;to&#x20;predict&#x20;protein&#x20;properties&#x20;and&#x20;guide&#x20;the&#x20;search&#x20;for&#x20;optimal&#x20;sequences.&#x20;To&#x20;improve&#x20;model&#x20;accuracy,&#x20;we&#x20;adopt&#x20;an&#x20;iterative&#x20;process&#x20;in&#x20;which&#x20;a&#x20;subset&#x20;of&#x20;predicted&#x20;sequences&#x20;is&#x20;experimentally&#x20;validated,&#x20;and&#x20;the&#x20;resulting&#x20;data&#x20;are&#x20;used&#x20;to&#x20;finetune&#x20;the&#x20;models.&#x20;We&#x20;validated&#x20;this&#x20;approach&#x20;using&#x20;glutamine&#x20;binding&#x20;protein&#x20;(QBP)&#x20;as&#x20;a&#x20;model&#x20;system,&#x20;targeting&#x20;improvements&#x20;in&#x20;structural&#x20;stability,&#x20;ligand&#x20;binding&#x20;energy,&#x20;and&#x20;shape&#x20;complementarity.&#x20;A&#x20;genetic&#x20;algorithm,&#x20;directed&#x20;by&#x20;the&#x20;ML&#x20;models,&#x20;effectively&#x20;identified&#x20;mutant&#x20;sequences&#x20;with&#x20;superior&#x20;performance&#x20;compared&#x20;to&#x20;those&#x20;from&#x20;conventional&#x20;approaches.&#x20;With&#x20;each&#x20;iteration,&#x20;the&#x20;ML&#x20;models&#x20;improved&#x20;in&#x20;predictive&#x20;power,&#x20;enabling&#x20;the&#x20;discovery&#x20;of&#x20;novel&#x20;QBP&#x20;variants&#x20;with&#x20;enhanced&#x20;properties.&#x20;This&#x20;study&#x20;demonstrates&#x20;the&#x20;potential&#x20;of&#x20;integrating&#x20;ML&#x20;and&#x20;iterative&#x20;optimization&#x20;for&#x20;efficient&#x20;and&#x20;scalable&#x20;protein&#x20;engineering.</dcvalue>
<dcvalue element="language" qualifier="none">English</dcvalue>
<dcvalue element="publisher" qualifier="none">Elsevier&#x20;BV</dcvalue>
<dcvalue element="title" qualifier="none">Enhancing&#x20;protein&#x20;structural&#x20;properties&#x20;through&#x20;model-guided&#x20;sequence&#x20;optimization</dcvalue>
<dcvalue element="type" qualifier="none">Article</dcvalue>
<dcvalue element="identifier" qualifier="doi">10.1016&#x2F;j.ijbiomac.2025.147072</dcvalue>
<dcvalue element="description" qualifier="journalClass">1</dcvalue>
<dcvalue element="identifier" qualifier="bibliographicCitation">International&#x20;Journal&#x20;of&#x20;Biological&#x20;Macromolecules,&#x20;v.323</dcvalue>
<dcvalue element="citation" qualifier="title">International&#x20;Journal&#x20;of&#x20;Biological&#x20;Macromolecules</dcvalue>
<dcvalue element="citation" qualifier="volume">323</dcvalue>
<dcvalue element="description" qualifier="isOpenAccess">Y</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scie</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scopus</dcvalue>
<dcvalue element="identifier" qualifier="wosid">001566245600006</dcvalue>
<dcvalue element="identifier" qualifier="scopusid">2-s2.0-105014283479</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Biochemistry&#x20;&amp;&#x20;Molecular&#x20;Biology</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Chemistry,&#x20;Applied</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Polymer&#x20;Science</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Biochemistry&#x20;&amp;&#x20;Molecular&#x20;Biology</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Chemistry</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Polymer&#x20;Science</dcvalue>
<dcvalue element="type" qualifier="docType">Article</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">BINDING</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">AFFINITY</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">SIMULATIONS</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">SPECIFICITY</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">STABILITY</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">DESIGN</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Multi-objective&#x20;protein&#x20;optimization</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Machine&#x20;learning</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Glutamine-binding&#x20;protein</dcvalue>
</dublin_core>
