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研究生: 羅馬克
Mark Louie Lopez
論文名稱: 使用元轉錄組估計後生動物的多樣性:從基因到族群
Using metatranscriptomics in estimating metazoan diversity: from genes to communities
指導教授: 町田龍二
Machida, Ryuji
口試委員: 謝志豪
Hsieh, Chih-hao
陳仲吉
Chen, Chung-Chi
劉少倫
Liu, Allen
蔡怡陞
Tsai, Isheng Jason
町田龍二
Machida, Ryuji
口試日期: 2022/01/14
學位類別: 博士
Doctor
系所名稱: 生命科學系
Department of Life Science
論文出版年: 2022
畢業學年度: 110
語文別: 英文
論文頁數: 145
中文關鍵詞: metatranscriptomicsRNA-sequencingDNA metabarcodingdiversity estimationallometric scaling
英文關鍵詞: metatranscriptomics, RNA-sequencing, DNA metabarcoding, diversity estimation, allometric scaling
研究方法: 實驗設計法田野調查法Next-generation sequencingRNA-sequencing
DOI URL: http://doi.org/10.6345/NTNU202200097
論文種類: 學術論文
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  • 元轉錄組學是一種高通量測序方法,藉由通過隨機測序特定環境條件下樣本的 RNA序列(信使 RNA [mRNA] 和核醣體 RNA [rRNA])獲取群落的轉錄組信息(第 1 章)。在後生動物群落研究中(如浮游動物研究)使用元轉錄組學並不常見也沒有得到嚴格的驗證。為了解決這個問題,根據生態學代謝理論 (metabolic theory of ecology)和生長數率假設 (growth rate hypothesis),我們提出了一個理論框架來驗證 RNA序列豐度(mRNA 和 rRNA)的異速增長(allometric scaling)。納入影響RNA 產生的因子作為群落多樣性的指標,例如來自元轉錄組學的 RNA 序列讀數通過下一代測序技術可以為代謝率、能量通量和含高磷的RNA 流動提供理論基礎建立模型(第2 章)。基於 PCR 的方法, 我們使用基因組 (gDNA) ,互補 DNA (cDNA) 擴增子以及形態學來估計模擬群落的物種多樣性和組成, 測試並比較了利用元轉錄組學作為表徵浮游動物群落的方法。結果顯示元轉錄組學提供了更好的物種豐富度和組成估計且與利用形態學估計的結果相似(第 3 章)。最後,於翡翠水庫採集的樣本做進一步測試,結果顯示物種多樣性的估計在生物和技術重複之間是一致的。利用元轉錄組學可以檢測數量較少的分類群,並同時解決形態分析所需的繁重工作和分類學專業知識(第 4 章)。在模擬群落和野外樣本中, 利用RNA 序列讀數整合異速增生有助於提升 RNA 序列讀數與物種數量之間的相關性。總體而言,這項研究為在群落生態學研究中使用元轉錄組學提供了一個定量模型,並展示了其作為監測浮游動物群落多樣性的工具的優勢(第 5 章)。

    Metatranscriptomics is a high-throughput sequencing method that allows direct access to community transcriptomic information through random sequencing of RNA (messenger RNA [mRNA] and ribosome RNA [rRNA]) transcripts from samples in specific environmental conditions (Chapter 1). Using metatranscriptomics in studying metazoan communities, like zooplankton research, has been uncommon and not rigorously validated. To address this, we first provide a theoretical framework to integrate the metabolic basis of RNA abundance (mRNA and rRNA) according to the assumptions of the metabolic theory of ecology and growth-rate hypothesis. Considering physiological factors affecting RNA production in molecular tools being used to characterize community diversity, such as RNA transcript reads from metatranscriptomics, could provide a theoretical baseline to model metabolic rate, energy flux, and turnover of phosphorus-rich RNA through next-generation sequencing technology (Chapter 2). Then, we tested and compared metatranscriptomics with PCR-based methods using genomic (gDNA) and complementary DNA (cDNA) amplicons, and morphology-based data for characterizing zooplankton mock communities. Metatranscriptomics provided better species richness and composition estimates that resembled those derived from morphological data (Chapter 3). Lastly, metatranscriptomics was further tested using field-collected samples (Feitsui reservoir), with the results showing consistent species diversity estimates among biological and technical replicates. Metatranscriptomics allowed the detection of less dominant taxa while addressing issues on laborious work and lack of taxonomic expertise needed in morphological analysis (Chapter 4). Moreover, integrating allometric scaling helped improve the predictive models on transcript reads and species biomass both in mock communities and field-collected samples. Overall, this study offers a theoretical framework that could extend the use of metatranscriptomics in characterizing community samples while demonstrating its advantages as an effective tool for monitoring the diversity of metazoan communities (Chapter 5).

    TABLE OF CONTENTS 摘要 iii ABSTRACT iv TABLE OF CONTENTS vi LIST OF TABLES viii LIST OF FIGURES ix CHAPTER 1: GENERAL INTRODUCTION 1 1.1 INTRODUCTION TO METATRANSCRIPTOMICS 1 1.2 METATRANSCRIPTOMICS IN COMMUNITY ECOLOGY STUDIES 4 1.3 METATRANSCRIPTOMICS IN COMMUNITY DIVERSITY ESTIMATION 5 1.4 ECOLOGICAL FRAMEWORKS ON RNA TRANSCRIPT SCALING 6 1.4.1 Metabolic theory of ecology (MTE) 8 1.4.2 Growth rate hypothesis (GRH) 10 1.4.3 Combined MTE-GRH model 11 1.5 RESEARCH OBJECTIVES AND ORGANIZATION 13 CHAPTER 2: INTEGRATING THE METABOLIC BASIS OF RNA TRANSCRIPT ABUNDANCE TO EXTEND THE USE OF METATRANSCRIPTOMICS CHARACTERIZING METAZOAN COMMUNITIES 14 2.1 ABSTRACT 14 2.2 INTRODUCTION 15 2.3 MATERIALS AND METHODS 18 2.3.1 Incubation of organisms 18 2.3.2 Mock community RNA extraction 19 2.3.3 Library preparation and sequencing 21 2.3.4 Genomic-level mRNA transcript and ribosome abundance quantification 22 2.3.5 Gene-level mRNA transcript and ribosome abundance quantification 23 2.4 RESULTS 25 2.4.1 Mock community analysis of RNA abundance 25 2.4.2 Genomic-level empirical model validation 26 2.4.3 Gene-level empirical model validation 30 2.4.4 Genome size and RNA scaling 33 2.5 DISCUSSION 35 2.6 CONCLUSION 39 CHAPTER 3: COMPARING METATRANSCRIPTOMICS WITH PCR-BASED METHODS IN ESTIMATING DIVERSITY AND COMPOSITION OF ZOOPLANKTON MOCK COMMUNITIES 40 3.1 ABSTRACT 40 3.2 INTRODUCTION 41 3.3 MATERIALS AND METHODS 43 3.3.1 Sample collection 43 3.3.2 Mock community preparation 44 3.3.3 DNA and RNA extraction 46 3.3.4 PCR amplification and sequencing 48 3.3.5 Metatranscriptome library preparation and sequencing 50 3.3.6 Bioinformatics analysis of the mtCOI amplicons 50 3.3.7 Bioinformatics analysis of metatranscriptome sequences 52 3.3.8 NUMT pseudogene analyses 53 3.3.9 Integration of allometric scaling on mitochondrial transcripts 54 3.4 RESULTS 55 3.4.1 Species richness detection 55 3.4.2 NUMT pseudogene detection 57 3.4.3 Diversity indices and community composition estimates 57 3.4.4 Allometric scaling of metatranscriptomic data 60 3.5 DISCUSSION 61 3.6 CONCLUSIONS 65 CHAPTER 4: USING METATRANSCRIPTOMICS IN MONITORING FRESHWATER ZOOPLANKTON COMMUNITIES IN A SUBTROPICAL RESERVOIR 66 4.1 ABSTRACT 66 4.2 INTRODUCTION 67 4.3 MATERIALS AND METHODS 70 4.3.1 Sampling site 70 4.3.2 Sample collection and preservation 70 4.3.3 Morphological analysis 71 4.3.4 Metatranscriptome analysis 72 4.3.5 Bioinformatics analysis of metatranscriptome sequences 73 4.3.6 Integration of allometric scaling on mitochondrial transcripts 75 4.4 RESULTS 76 4.4.1 Application of metatranscriptomics to the field-collected samples 76 4.4.2 Allometric scaling of metatranscriptomic data 76 4.5 DISCUSSION 80 4.6 CONCLUSIONS 84 CHAPTER 5: CONCLUSIONS AND FUTURE WORKS 86 5.1 CONCLUSIONS 86 5.2 FUTURE WORKS 87 REFERENCES 88 APPENDICES 110 APPENDIX A: SUPPLEMENTAL TABLES 110 APPENDIX B: SUPPLEMENTAL FIGURES 144

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