4.6 Article

Gene expression profiling-based identification of cell-surface targets for developing multimeric ligands in pancreatic cancer

期刊

MOLECULAR CANCER THERAPEUTICS
卷 7, 期 9, 页码 3071-3080

出版社

AMER ASSOC CANCER RESEARCH
DOI: 10.1158/1535-7163.MCT-08-0402

关键词

-

类别

资金

  1. National Cancer Institute [CA097360, CA095944, CA109552]
  2. Arizona Biomedical Research Commission
  3. High Performance Computing System

向作者/读者索取更多资源

Multimeric ligands are ligands that contain multiple binding domains that simultaneously target multiple cell-surface proteins. Due to cooperative binding, multimeric ligands can have high avidity for cells (tumor) expressing all targeting proteins and only show minimal binding to cells (normal tissues) expressing none or only some of the targets. Identifying combinations of targets that concurrently express in tumor cells but not in normal cells is a challenging task. Here, we describe a novel approach for identifying such combinations using genome-wide gene expression profiling followed by immunohistochemistry. We first generated a database of mRNA gene expression profiles for 28 pancreatic cancer specimens and 103 normal tissue samples representing 28 unique tissue/cell types using DNA microarrays. The expression data for genes that encode proteins with cell-surface epitopes were then extracted from the database and analyzed using a novel multivariate rule-based computational approach to identify gene combinations that are expressed at an efficient binding level in tumors but not in normal tissues. These combinations were further ranked according to the proportion of tumor samples that expressed the sets at efficient levels. Protein expression of the genes contained in the top ranked combinations was confirmed using immunohistochemistry on a pancreatic tumor tissue and normal tissue microarrays. Coexpression of targets was further validated by their combined expression in pancreatic cancer cell lines using immunocytochemistry. These validated gene combinations thus encompass a list of cell-surface targets that can be used to develop multimeric ligands for the imaging and treatment of pancreatic cancer.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.6
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

Review Oncology

Cancer heterogeneity and metastasis: life at the edge

Robert J. Gillies

Summary: Evidence suggests that cells at the tumor stromal interface express higher levels of proteins related to glycolytic metabolism, leading to acid production which is associated with increased metastatic potential. The molecular machinery responsible for acid export is being studied, and neutralizing the acidity may prevent local invasion and metastasis.

CLINICAL & EXPERIMENTAL METASTASIS (2022)

Article Oncology

Multiomic profiling of checkpoint inhibitor-treated melanoma: Identifying predictors of response and resistance, and markers of biological discordance

Felicity Newell, Ines Pires da Silva, Peter A. Johansson, Alexander M. Menzies, James S. Wilmott, Venkateswar Addala, Matteo S. Carlino, Helen Rizos, Katia Nones, Jarem J. Edwards, Vanessa Lakis, Stephen H. Kazakoff, Pamela Mukhopadhyay, Peter M. Ferguson, Conrad Leonard, Lambros T. Koufariotis, Scott Wood, Christian U. Blank, John F. Thompson, Andrew J. Spillane, Robyn P. M. Saw, Kerwin F. Shannon, John Pearson, Graham J. Mann, Nicholas K. Hayward, Richard A. Scolyer, Nicola Waddell, Georgina Long

Summary: This study examines the relationship between various factors and the response to immunotherapy in patients with advanced cutaneous melanoma. The results identify several factors associated with response and develop a multivariable model for predicting response. However, the study also indicates the presence of intratumor and intertumor heterogeneity in response to immunotherapy and the lack of clear biological mechanisms explaining non-predicted responses.

CANCER CELL (2022)

Article Genetics & Heredity

Patient-derived xenograft models capture genomic heterogeneity in endometrial cancer

Vanessa F. Bonazzi, Olga Kondrashova, Deborah Smith, Katia Nones, Asmerom T. Sengal, Robert Ju, Leisl M. Packer, Lambros T. Koufariotis, Stephen H. Kazakoff, Aimee L. Davidson, Priya Ramarao-Milne, Vanessa Lakis, Felicity Newell, Rebecca Rogers, Claire Davies, James Nicklin, Andrea Garrett, Naven Chetty, Lewis Perrin, John Pearson, Ann-Marie Patch, Nicola Waddell, Pamela M. Pollock

Summary: Endometrial cancer comprises four molecular subtypes with differing etiology, prognoses, and responses to chemotherapy. Patient-derived xenograft models have been successfully generated and showed sensitivity to PARP inhibitor in copy number high molecular subtype; however, deeper and more durable responses will likely require combination of PARPi with other agents.

GENOME MEDICINE (2022)

Article Multidisciplinary Sciences

Anatomic position determines oncogenic specificity in melanoma

Joshua M. Weiss, Miranda Hunter, Nelly M. Cruz, Arianna Baggiolini, Mohita Tagore, Yilun Ma, Sandra Misale, Michelangelo Marasco, Theresa Simon-Vermot, Nathaniel R. Campbell, Felicity Newell, James S. Wilmott, Peter A. Johansson, John F. Thompson, Georgina Long, John Pearson, Graham J. Mann, Richard A. Scolyer, Nicola Waddell, Emily D. Montal, Ting-Hsiang Huang, Philip Jonsson, Mark T. A. Donoghue, Christopher C. Harris, Barry S. Taylor, Tianhao Xu, Ronan Chaligne, Pavel Shliaha, Ronald Hendrickson, Achim A. Jungbluth, Cecilia Lezcano, Richard Koche, Lorenz Studer, Charlotte E. Ariyan, David B. Solit, Jedd D. Wolchok, Taha Merghoub, Neal Rosen, Nicholas K. Hayward, Richard M. White

Summary: Oncogenic alterations to DNA are not transforming in all cellular contexts. The anatomic position of the cell of origin is a major determinant of why cells respond to specific oncogenes. Cutaneous melanoma and acral melanoma have different genetic mutations, which may be related to their anatomical locations. Acral melanoma tumours predominantly form in the fins of zebrafish, which are evolutionary precursors to tetrapod limbs. Melanocytes in these acral locations have a unique transcriptional state and are susceptible to CRKL amplification and insulin-like growth factor signaling.

NATURE (2022)

Article Genetics & Heredity

Comprehensive genomic and tumour immune profiling reveals potential therapeutic targets in malignant pleural mesothelioma

Jenette Creaney, Ann-Marie Patch, Venkateswar Addala, Sophie A. Sneddon, Katia Nones, Ian M. Dick, Y. C. Gary Lee, Felicity Newell, Ebony J. Rouse, Marjan M. Naeini, Olga Kondrashova, Vanessa Lakis, Apostolos Nakas, David Waller, Annabel Sharkey, Pamela Mukhopadhyay, Stephen H. Kazakoff, Lambros T. Koufariotis, Aimee L. Davidson, Priya Ramarao-Milne, Oliver Holmes, Qinying Xu, Conrad Leonard, Scott Wood, Sean M. Grimmond, Raphael Bueno, Dean A. Fennell, John Pearson, Bruce W. Robinson, Nicola Waddell

Summary: This study analyzed the genomic and immune features of malignant pleural mesothelioma (MPM) samples and identified driver genes, mutational signatures, and the tumor immune environment associated with MPM. The findings suggest that accounting for genomic and immune microenvironment status may influence future therapeutic planning.

GENOME MEDICINE (2022)

Article Oncology

Images Are Data: Challenges and Opportunities in the Clinical Translation of Radiomics

Wei Mu, Matthew B. Schabath, Robert J. Gillies

Summary: Radiomics provides an opportunity to uncover image-based biomarkers by converting and analyzing medical images into high-dimensional mineable data. However, the lack of a generally accepted analytic and reporting standard makes interstudy comparisons challenging. Comparing and combining results from multiple studies is essential for clinical application.

CANCER RESEARCH (2022)

Article Oncology

Gene-Expression Profiling of Mucinous Ovarian Tumors and Comparison with Upper and Lower Gastrointestinal Tumors Identifies Markers Associated with Adverse Outcomes

Nicola S. Meagher, Kylie L. Gorringe, Matthew Wakefield, Adelyn Bolithon, Chi Nam Ignatius Pang, Derek S. Chiu, Michael S. Anglesio, Kylie-Ann Mallitt, Jennifer A. Doherty, Holly R. Harris, Joellen M. Schildkraut, Andrew Berchuck, Kara L. Cushing-Haugen, Ksenia Chezar, Angela Chou, Adeline Tan, Jennifer Alsop, Ellen Barlow, Matthias W. Beckmann, Jessica Boros, David D. L. Bowtell, Alison H. Brand, James D. Brenton, Ian Campbell, Dane Cheasley, Joshua Cohen, Cezary Cybulski, Esther Elishaev, Ramona Erber, Rhonda Farrell, Anna Fischer, Zhuxuan Fu, Blake Gilks, Anthony J. Gill, Charlie Gourley, Marcel Grube, Paul R. Harnett, Arndt Hartmann, Anusha Hettiaratchi, Claus K. Hogdall, Tomasz Huzarski, Anna Jakubowska, Mercedes Jimenez-Linan, Catherine J. Kennedy, Byoung-Gie Kim, Jae-Weon Kim, Jae-Hoon Kim, Kayla Klett, Jennifer M. Koziak, Tiffany Lai, Angela Laslavic, Jenny Lester, Yee Leung, Na Li, Winston Liauw, Belle W. X. Lim, Anna Linder, Jan Lubinski, Sakshi Mahale, Constantina Mateoiu, Simone McInerny, Janusz Menkiszak, Parham Minoo, Suzana Mittelstadt, David Morris, Sandra Orsulic, Sang-Yoon Park, Celeste Leigh Pearce, John Pearson, Malcolm C. Pike, Carmel M. Quinn, Ganendra Raj Mohan, Jianyu Rao, Marjorie J. Riggan, Matthias Ruebner, Stuart Salfinger, Clare L. Scott, Mitul Shah, Helen Steed, Colin J. R. Stewart, Deepak Subramanian, Soseul Sung, Katrina Tang, Paul Timpson, Robyn L. Ward, Rebekka Wiedenhoefer, Heather Thorne, Paul A. Cohen, Philip Crowe, Peter A. Fasching, Jacek Gronwald, Nicholas J. Hawkins, Estrid Hogdall, David G. Huntsman, Paul A. James, Beth Y. Karlan, Linda E. Kelemen, Stefan Kommoss, Gottfried E. Konecny, Francesmary Modugno, Sue K. Park, Annette Staebler, Karin Sundfeldt, Anna H. Wu, Aline Talhouk, Paul D. P. Pharoah, Lyndal Anderson, Anna DeFazio, Martin Kobel, Michael L. Friedlander, Susan J. Ramus

Summary: Clinical and gene expression data were analyzed to identify prognostic and diagnostic features of advanced-stage mucinous ovarian carcinoma (MOC) and differentiate it from gastrointestinal (GI) metastases. An infiltrative growth pattern was associated with poor prognosis, and high expression of THBS2 and TAGLN was linked to adverse prognosis in MOC. HER2 amplification or high mRNA expression was detected in some MOC cases, suggesting the potential of HER2-targeted therapy. MOC samples clustered with upper GI tumors, indicating similar biology and treatment strategies.

CLINICAL CANCER RESEARCH (2022)

Article Genetics & Heredity

Analysis of hereditary cancer gene variant classifications from ClinVar indicates a need for regular reassessment of clinical assertions

Aimee L. Davidson, Olga Kondrashova, Conrad Leonard, Scott Wood, Emma Tudini, Georgina E. Hollway, John Pearson, Felicity Newell, Amanda B. Spurdle, Nicola Waddell

Summary: This study examined how variant classification changes over time using the ClinVar database. The findings suggest that there are significant changes in variant classification between consecutive semi-annual releases, emphasizing the need for regular reassessment of clinical variant interpretations.

HUMAN MUTATION (2022)

Review Genetics & Heredity

Shariant platform: Enabling evidence sharing across Australian clinical genetic-testing laboratories to support variant interpretation

Emma Tudini, James Andrews, David M. Lawrence, Sarah L. King-Smith, Naomi Baker, Leanne Baxter, John Beilby, Bruce Bennetts, Victoria Beshay, Michael Black, Tiffany F. Boughtwood, Kristian Brion, Pak Leng Cheong, Michael Christie, John Christodoulou, Belinda Chong, Kathy Cox, Mark R. Davis, Lucas Dejong, Marcel E. Dinger, Kenneth D. Doig, Evelyn Douglas, Andrew Dubowsky, Melissa Ellul, Andrew Fellowes, Katrina Fisk, Cristina Fortuno, Kathryn Friend, Renee L. Gallagher, Song Gao, Emma Hackett, Johanna Hadler, Michael Hipwell, Gladys Ho, Georgina Hollway, Amanda J. Hooper, Karin S. Kassahn, Rahul Krishnaraj, Chiyan Lau, Huong Le, Huei San Leong, Ben Lundie, Sebastian Lunke, Anthony Marty, Mary McPhillips, Lan T. Nguyen, Katia Nones, Kristen Palmer, John Pearson, Michael C. J. Quinn, Lesley H. Rawlings, Simon Sadedin, Louisa Sanchez, Andreas W. Schreiber, Emanouil Sigalas, Aygul Simsek, Julien Soubrier, Zornitza Stark, Bryony A. Thompson, U. James, Cassandra G. Vakulin, Amanda Wells, Cheryl A. Wise, Rick Woods, Andrew Ziolkowski, Marie-Jo Brion, Hamish S. Scott, Natalie P. Thorne, Amanda B. Spurdle

Summary: Sharing genomic variant interpretations across laboratories is important for maintaining consistency in variant assertions. However, resource constraints, consent issues, and differences in interpretation systems have hindered the sharing of genotypic data in Australian clinical genetic-testing laboratories. To overcome these barriers, the Shariant platform was developed, enabling ongoing sharing of variant interpretations and associated evidence between laboratories. Through collaboration with clinical laboratories, discrepancies in variant classifications have been identified and efforts to standardize interpretation practices have been made.

AMERICAN JOURNAL OF HUMAN GENETICS (2022)

Article Oncology

Evolutionary Analysis of TCGA Data Using Over- and Under- Mutated Genes Identify Key Molecular Pathways and Cellular Functions in Lung Cancer Subtypes

Audrey R. Freischel, Jamie K. Teer, Kimberly Luddy, Jessica Cunningham, Yael Artzy-Randrup, Tamir Epstein, Kenneth Y. Tsai, Anders Berglund, John L. Cleveland, Robert J. Gillies, Joel S. Brown, Robert A. Gatenby

Summary: Evolution plays a crucial role in the initiation and progression of cancer. In addition to driver mutations, natural selection conserves genes that are necessary for optimal cancer cell fitness. By studying subtypes of lung adenocarcinoma, we identified highly mutated and highly conserved genes, which have common utility in adapting to similar tissue environments and are critical for optimal fitness. Targeting tumor-specific conserved genes may represent an effective treatment strategy.

CANCERS (2023)

Article Oncology

Classifying Malignancy in Prostate Glandular Structures from Biopsy Scans with Deep Learning

Ryan Fogarty, Dmitry Goldgof, Lawrence Hall, Alex Lopez, Joseph Johnson, Manoj Gadara, Radka Stoyanova, Sanoj Punnen, Alan Pollack, Julio Pow-Sang, Yoganand Balagurunathan

Summary: In recent years, Gleason's prostate cancer histopathological description has become a universal standard for disease diagnosis and progression. We have developed deep learning models to assist clinicians in identifying the primary cancer grade. These models have significant application value in histopathological classification.

CANCERS (2023)

Article Pathology

A Promising Biomarker for Predicting Recurrence in Patients with BRAF-Negative Melanoma

Lauren G. Aoude, Sandra Brosda, Jessica Ng, James M. Lonie, Clemence J. Belle, Kalpana Patel, Lambros T. Koufariotis, Scott Wood, Victoria Atkinson, B. Mark Smithers, John Pearson, Nicola Waddell, Andrew P. Barbour, Vanessa F. Bonazzi

Summary: For patients with BRAF wild-type stage III and IV melanoma, the study found that circulating tumor DNA (ctDNA) can be used as a noninvasive liquid biopsy to identify recurrent disease and detect targetable mutations. The presence and concentration of ctDNA correlated with disease-specific survival and treatment response.

JOURNAL OF MOLECULAR DIAGNOSTICS (2023)

Review Oncology

Computational immunogenomic approaches to predict response to cancer immunotherapies

Venkateswar Addala, Felicity Newell, John V. Pearson, Alec Redwood, Bruce W. Robinson, Jenette Creaney, Nicola Waddell

Summary: Cancer immunogenomics is an emerging field that combines genomics and immunology to better understand and improve cancer immunotherapy. The use of large-scale genomic collaborations and advanced sequencing techniques has allowed researchers to identify clinically actionable alterations and predictive biomarkers in various types of cancer. Computational approaches and machine learning algorithms have been developed to analyze sequencing data and provide clinically useful information. However, there is still a need to fully understand the potential and limitations of these approaches in improving patient outcomes.

NATURE REVIEWS CLINICAL ONCOLOGY (2023)

Article Multidisciplinary Sciences

Performance of tumour microenvironment deconvolution methods in breast cancer using single-cell simulated bulk mixtures

Khoa A. Tran, Venkateswar Addala, Rebecca L. Johnston, David Lovell, Andrew Bradley, Lambros T. Koufariotis, Scott Wood, Sunny Z. Wu, Daniel Roden, Ghamdan Al-Eryani, Alexander Swarbrick, Elizabeth D. Williams, John V. Pearson, Olga Kondrashova, Nicola Waddell

Summary: Cells in the tumour microenvironment (TME) can have a significant impact on tumour development and treatment response. Computational methods have been developed to analyze and separate TME from bulk RNA-seq data. In this study, the authors used single-cell RNA-seq data from breast cancer to generate simulated bulk data and compared the performance of nine different TME deconvolution methods. They found that some methods were more effective in deconvolving mixtures with high tumour purity levels, while most methods tended to misclassify normal epithelial cells as cancer epithelial cells as tumour purity increased. The authors also discovered that the molecular subtype of breast cancer played a role in this misclassification. BayesPrism and DWLS had the lowest number of false positives and false negatives, making them the most reliable methods for deconvolving specific immune lineages. These findings emphasize the importance of characterizing rare cell types using single-cell techniques and taking into account the tumour cell composition when deconvolving the TME.

NATURE COMMUNICATIONS (2023)

Article Oncology

Discrepancies in tumor mutation burden reporting from sequential endobronchial ultrasound transbronchial needle aspiration samples within single lymph node stations - brief report

David Fielding, Andrew J. Dalley, Mahendra Singh, Lakshmy Nandakumar, Vanessa Lakis, Haarika Chittoory, David Fairbairn, Ann-Marie Patch, Stephen H. Kazakoff, Kaltin Ferguson, Farzad Bashirzadeh, Michael Bint, Carl Pahoff, Jung Hwa Son, Kimberley Ryan, Alan Hodgson, Sowmya Sharma, John V. Pearson, Nicola Waddell, Sunil R. Lakhani, Gunter Hartel, Peter T. Simpson, Katia Nones

Summary: Tumour Mutation Burden (TMB) is a potential biomarker for immune cancer therapies, and this study investigated parameters affecting TMB using duplicate cytology smears obtained from malignant lymph nodes sampled by EBUS TBNA. The results showed minimal variation in TMB in most cases with repeated samples of a lymph node station.

FRONTIERS IN ONCOLOGY (2023)

暂无数据