1. LIFEx-texture: Nardone V, Reginelli A, Scala F, Carbone SF, Mazzei MA, Sebaste L, Carfagno T, Battaglia G, Pastina P, Correale P, Tini P, Pellino G, Cappabianca S, Pirtoli L. Magnetic-Resonance-Imaging Texture Analysis Predicts Early Progression in Rectal Cancer Patients Undergoing Neoadjuvant Chemoradiation. Gastroenterol Res Pract. 2019 Jan 17;2019:8505798. https://doi.org/10.1155/2019/8505798. PMID: 30847005; PMCID: PMC6360039.
  2. LIFEx-texture: Tian, Zerong; Chen, Chaoyue; Fan, Yimeng; Ou, Xuejin; Wang, Jian; Ma, Xuelei; Xu, Jianguo. Glioblastoma and Anaplastic Astrocytoma: Differentiation Using MRI Texture Analysis. Front Oncol ; 9: 876, 2019 (doi)
  3. LIFEx-texture: A downsampling strategy to assess the predictive value of radiomic features. Dirand, AS., Frouin, F. & Buvat, I. ; Sci Rep 9, 17869 (2019) (doi)
  4. LIFEx-Texture: An initial experience of machine learning based on multi-sequence texture parameters in magnetic resonance imaging to differentiate glioblastoma from brain metastases. Machiko Tateishi, Takeshi Nakaura, Mika Kitajima, Hiroyuki Uetani, Masataka Nakagawa, Taihei Inoue, Jun-ichiro Kuroda, Akitake Mukasa, Yasuyuki Yamashita ; Journal of the Neurological Sciences ; Volume 410, 15 March 2020 (doi)
  5. LIFEx-Texture: Multiparametric quantitative and texture 18F-FDG PET/CT analysis for primary malignant tumour grade differentiation ; Mykola Novikov ; Eur Radiol Exp 3, 48 (2019) (doi)
  6. LIFEx-Texture: Radiomics predicts survival of patients with advanced non‑small cell lung cancer undergoing PD‑1 blockade using Nivolumab ; V Nardone, P Tini, P Pastina, C Botta, A Reginelli, Oncology Letters ; Dec 2019 (spandidos)
  7. LIFEx-Texture: Differential diagnosis of pancreatic serous cystadenoma and mucinous cystadenoma: utility of textural features in combination with morphological characteristics ; J Yang, X Guo, H Zhang, W Zhang, J Song, H Xu, X Ma - BMC Cancer, 2019 (bmccancer)
  8. LIFEx-Texture-MTV: Association of metabolic and genetic heterogeneity in head and neck squamous cell carcinoma with prognostic implications: integration of FDG PET and genomic analysis ;Jinyeong Choi, Jeong-An Gim, Chiwoo Oh, Seunggyun Ha, Howard Lee, Hongyoon Choi & Hyung-Jun Im ; EJNMMI Research volume 9, Article number: 97 (2019) (ejnmmi)
  9. LIFEx-Texture: The Diagnostic Value of Radiomics-Based Machine Learning in Predicting the Grade of Meningiomas Using Conventional Magnetic Resonance Imaging: A Preliminary Study ; Chaoyue Chen, Xinyi Guo, Jian Wang, Wen Guo, Xuelei Ma and Jianguo Xu ; December 2019 ; Frontiers in Oncology (frontiers)
  10. LIFEx-Texture: Radiomics based on 18F-FDG PET/CT could differentiate breast carcinoma from breast lymphoma using machine-learning approach: A preliminary study ; Xuejin Ou, Jing Zhang, Jian Wang, Fuwen Pang, Yongsheng Wang, Xiawei Wei, Xuelei Ma ; Cancer Medicine. 2019;00:1–11 (onlinelibrary)
  11. LIFEx-Texure: Metastasis risk prediction model in osteosarcoma using metabolic imaging phenotypes: A multivariable radiomics model ; Heesoon Sheen, Wook Kim, Byung Hyun Byun, Chang-Bae Kong, Won Seok Song, Wan Hyeong Cho, Ilhan Lim, Sang Moo Lim, Sang-Keun WooID1 ; PLoS ONE 14(11): e0225242 (doi)
  12. LIFEx-Texture: Heterogeneity in tumours: Validating the use of radiomic features on 18F-FDG PET/CT scans of lung cancer patients as a prognostic tool ; Marie Manon Krebs Krarup, Lotte Nygard, Ivan Richter Vogelius, Flemming Littrup Andersen, Gary Cook, Vicky Goh, Barbara Malene Fischer ; Volume 144, March 2020, Pages 72-78 (doi)
  13. LIFEx-Texture: Value of pre-therapy 18F-FDG PET/CT radiomics in predicting EGFR mutation status in patients with non-small cell lung cancer ; Jianyuan Zhang, Xinming Zhao, Yan Zhao, Jingmian Zhang, Zhaoqi Zhang, Jianfang Wang, Yingchen Wang, Meng Dai, Jingya Han ; European Journal of Nuclear Medicine and Molecular Imaging ; November 2019 ; pp 1–10 (springer)
  14. LIFEx-Texture: A radiomic approach to predicting nodal relapse and disease-specific survival in patients treated with stereotactic body radiation therapy for early-stage non-small cell lung cancer ; Davide Franceschini, Luca Cozzi, Fiorenza De RosePierina Navarria, Antonella Fogliata, Ciro Franzese, Donato Pezzulla, Stefano TomatisGiacomo Reggiori, Marta Scorsetti ;Strahlentherapie und Onkologie ; November 2019 ; (springer)
  15. LIFEx-Texture: Contrast-Enhanced MRI Texture Parameters as Potential Prognostic Factors for Primary Central Nervous System Lymphoma Patients Receiving High-Dose Methotrexate-Based Chemotherapy ; Chaoyue Chen, Hongyu Zhuo, Xiawei Wei, Xuelei Ma ; Contrast Media & Molecular Imaging 2019(2):1-7 ; November 2019 (hindawi)
  16. LIFEx-Texture: Radiogenomics of lower-grade gliomas: machine learning–based MRI texture analysis for predicting 1p/19q codeletion status ; Burak Kocak, Emine Sebnem Durmaz, Ece Ates, Ipek Sel, Saime Turgut Gunes, Ozlem Korkmaz Kaya, Amalya Zeynalova, Ozgur Kilickesmez ; November 2019 ; European Radiology (springer)
  17. LIFEx-Texture: Radiomics-Based Machine Learning Technology Enables Better Differentiation Between Glioblastoma and Anaplastic Oligodendroglioma ; Yimeng Fan Chaoyue Chen, Fumin Zhao, Zerong Tian3, Jian Wang, Xuelei Ma and Jianguo Xu ; November 2019 Frontiers in Oncology 9:1164 (frontiers)
  18. LIFEx-Texture: 11C-methionine-PET for diferentiating recurrent brain tumor from radiation necrosis: radiomics approach with random forest classifer ; Masatoshi Hotta, Ryogo Minamimoto & Kenta Miwa ; December 2019; Scientific Reports 9(1) (doi)
  19. LIFEx-Texture: The Diagnostic Value of MRI-Based Texture Analysis in Discrimination of Tumors Located in Posterior Fossa: A Preliminary Study ; Yang Zhang, Chaoyue Chen, Zerong Tian, Ridong Feng, Yangfan Cheng, Jianguo Xu ; October 2019 Frontiers in Neuroscience 13:1113 (frontiers)
  20. LIFEx-Texture: Radiomics in stratification of pancreatic cystic lesions: Machine learning in action ; Vipin Dalal, Joseph Carmicheal, Amaninder Dhaliwal, Maneesh Jain, Sukhwinder Kaur, Surinder K.Batra ; Cancer Letters ; October 2019 (doi)
  21. LIFEx-Texture: Machine Learning-based MRI Texture Analysis Enables Differentiation between Glioblastoma and Anaplastic Oligodendroglioma ; Yimeng Fan, Xuelei Ma, Chaoyue Chen, Zerong Tian, Jian Wang and Jianguo Xu ; Front. Oncol. 2019.01164 (doi)
  22. LIFEx-Texture: A multidimensional nomogram combining overall stage, dose volume histogram parameters and radiomics to predict progression-free survival in patients with locoregionally advanced nasopharyngeal carcinoma ; 
    Kaixuan Yanga, Jiangfang Tiana, Bin Zhang, Mei Lia, Wenji Xie, Yating Zou, Qiaoyue Tan, Lihui Liu, Jinbing Zhu, Arthur Shou, Guangjun Li ; Oral Oncology ; Volume 98, November 2019, Pages 85-91 ; (doi)
  23. LIFEx-Texture: Shape and Texture Analysis of Radiomic Data for Computer-Assisted Diagnosis and Prognostication: An Overview ; Francesco Bianconi, Mario Luca Fravolini, Isabella Palumbo, Barbara Palumbo ; Proceedings of the International Conference on Design Tools and Methods in Industrial Engineering, ADM 2019, September 9-10, 2019, Modena, Italy pp 3-14 (springer)
  24. LIFEx-Texture: MRI derived radiomics: Methodology and clinical applications in the field of pelvic oncology ; Ulrike Schick, François Lucia, Gurvan Dissaux, Dimitris Visvikis, Bogdan Badic, Ingrid Masson, Olivier Pradier, Vincent Bourbonne and Mathieu Hatt ; the British Institute of Radiology ; 2019, 12 september (doi)
  25. LIFEx-Texture: Radiomics with artificial intelligence: a practical guide for beginners ; Burak Koçak, Emine Sebnem Durmaz, Ece Ates, Özgür Kiliçkesmez ;  Diagn Interv Radiol ; 4 september 2019 (doi)
  26. LIFEx-texture: Prediction of outcome in anal squamous cell carcinoma using radiomic feature analysis of pre-treatment FDG PET-CT ; PJ Brown, J Zhong, R Frood, S Currie, A Gilbert, AL Appelt, D Sebag-Montefiore, A Scarsbrook ;  04 September 2019 ; EJNMMI pp 1-10 (doi)
  27. LIFEx-Texture: Conventional MRI radiomics in patients with suspected early- or pseudo-progression ; Alexandre Bani-Sadr, Omer Faruk Eker, Lise-Prune Berner, Roxana Ameli, Marc Hermier, Marc Barritault, David Meyronet, Jacques Guyotat, Emmanuel Jouanneau, Jerome Honnorat, François Ducray, Yves Berthezene ; Neuro-Oncology Advances ; 01 September 2019 (doi)
  28. LIFEx-Texture: CT assessment of tumor heterogeneity and the potential for the prediction of human papillomavirus status in oropharyngeal squamous cell carcinoma ; Mungai F, Verrone GB, Pietragalla M, Berti V, Addeo G, Desideri I, Bonasera L, Miele V. Radiol Med. 2019 Mar 25. (pubmed)
  29. LIFEx-Texture: Glioblastoma Multiforme and Anaplastic Astrocytoma: Differentiation using MRI Texture Analysis ; J Xu, X Ma, Z Tian, C Chen, Y Fan, X Ou, J Wang - Frontiers in Oncology, 2019 ; (doi)
  30. LIFEx-Texture: Contrast-Enhanced CT Texture Analysis: a New Set of Predictive Factors for Small Cell Lung Cancer ; Chaoyue Chen, Xuejin Ou, Hui Li, Yanjie Zhao, Fengnian Zhao, Shengliang Zhou, Xuelei Ma ; Molecular Imaging and Biology ; August 2019 ; pp 1-7 (springer)
  31. LIFEx-MTV: Time to prepare for risk adaptation in lymphoma by standardising measurement of metabolic tumour burden. Sally F Barrington, Michel Meignan ; Apr 2019 ; Journal of Nuclear Medicine ; (jnm)
  32. LIFEx-Texture: Prognostic Value of Functional Parameters of 18F-FDG-PET Images in Patients with Primary Renal/Adrenal Lymphoma ; M Wang, H Xu, L Xiao, W Song, S Zhu, X Ma ; Contrast Media & Molecular Imaging, Volume 2019, Article ID 2641627 (doicm&mi)
  33. LIFEx-Texture: Machine learning for differentiating metastatic and completely responded sclerotic bone lesion in prostate cancer: a retrospective radiomics study. Emine Acar, Asim Leblebici, Berat Ender Ellidokuz, Yasemin Basbinar and Gamze Çapa Kaya. British Institute of Radiology. Published Online: July 10, 2019 (doi)
  34. LIFEx-Texture: AI-based applications in hybrid imaging: how to build smart and truly multi-parametric decision models for radiomics. Isabella Castiglioni, Francesca GallivanonePaolo Soda, Michele AvanzoJoseph StancanelloMarco AielloMatteo InterlenghiMarco Salvatore. European Journal of Nuclear Medicine and Molecular Imaging. First Online: 11 July 2019 ; (springer)
  35. LIFEx-Texture: CT texture analysis for the prediction of KRAS mutation status in colorectal cancer via a machine learning approach ; N Taguchi, S Oda, Y Yokota, S Yamamura, M Imuta ;European Journal of Radiology ; Volume 118, September 2019, Pages 38-43 (sciencedirect)
  36. LIFEx-Texture: Radiomics in nuclear medicine: robustness, reproducibility, standardization, and howto avoid data analysis traps and replication crisis ; Alex Zwanenburg ; European Journal of Nuclear Medicine and Molecular Imaging ; 25 June 2019 (doi)
  37. LIFEx-Texture: Predicting survival and local control after radiochemotherapy in locally advanced head and neck cancer by means of computed tomography based radiomics ; Luca Cozzi, Ciro Franzese, Antonella Fogliata, Davide Franceschini, Pierina Navarria, Stefano Tomatis, Marta Scorsetti ; Strahlentherapie und Onkologie, pp 1-14 (doi)
  38. LIFEx-Texture: Discrimination of pancreatic serous cystadenomas from mucinous cystadenomas with CT textural features: based on machine learning ; Jing Yang, Xinli Guo, Xuejin Ou, Weiwei Zhang, Xuelei Ma ; Front. Oncol., 12 June 2019 (doilink)
  39. LIFEx-Texture: The Future of Medical Imaging ; Luigi Landini ; Current Pharmaceutical Design, 2018, Vol. 24, No. 46 (eurekaselect)
  40. LIFEx-MTV: Time to prepare for risk adaptation in lymphoma by standardising measurement of metabolic tumour burden ; Sally F Barrington and Michel Meignan ; J Nucl Med April 6, 2019 jnumed.119.227249 (abstract)
  41. LIFEx-Texture: Inter-observer and segmentation method variability of textural analysis in pre-therapeutic FDG PET/CT in head and neck cancer ; Catherine Guezennec, David Bourhis, Fanny Orlhac, Philippe Robin, Jean-Baptiste Corre, Olivier Delcroix, Yves Gobel, Ulrike Schick, Pierre-Yves Salaun, Ronan Abgral ; PLOSone March 28, 2019 ; (doiplosone)
  42. LIFEx-Texture: PET/CT radiomics in breast cancer: promising tool for prediction of pathological response to neoadjuvant chemotherapy ; Lidija Antunovic, Rita De Sanctis, Luca Cozzi, Margarita Kirienko, Andrea Sagona, Rosalba Torrisi, Corrado Tinterri, Armando Santoro, Arturo Chiti, Renata Zelic, Martina Sollini ; 26 March 2019 ; European Journal of Nuclear Medicine and Molecular Imaging ; (doi)
  43. LIFEx-Texture: Radiomics and Machine Learning for Radiotherapy in Head and Neck Cancers ; Paul Giraud, Philippe Giraud, Anne Gasnier, Radouane El Ayachy, Sarah Kreps, Jean-Philippe Foy, Catherine Durdux, Florence Huguet, Anita Burgun and Jean-Emmanuel Bibault ; Front. Oncol., 27 March 2019 ; (doi)
  44. LIFEx-Texture: Texture Analysis on [18F]FDG PET/CT in Non-Small-Cell Lung Cancer: Correlations Between PET Features, CT Features, and Histological Types ; Francesco Bianconi, Isabella Palumbo, Mario Luca Fravolini, Rita Chiari, Matteo Minestrini, Luca Brunese, Barbara Palumbo ; March 2019 ; Molecular Imaging & Biology ; (doi)
  45. LIFEx-Texture: Tumor heterogeneity in oral and oropharyngeal squamous cell carcinoma assessed by texture analysis of CT and conventional MRI: a potential marker of overall survival ; Jiliang Ren, Ying Yuan, Yiqian Shi, Xiaofeng Tao ;Acta Radiologica ; First Published February 28, 2019 (doi)
  46. LIFEx-Texture: Ability of 18F-FDG PET/CT Radiomic Features to Distinguish Breast Carcinoma from Breast Lymphoma - Xuejin Ou, Jian Wang, Ruofan Zhou, Sha Zhu, Fuwen Pang, Yi Zhou, Rong Tian and Xuelei Ma ; Contrast Media & Molecular Imaging ; Volume 2019, Article ID 4507694, Published 25 February 2019, 9 pages (doi)
  47. LIFEx-Texture: Postmortem Changes in Skeletal Muscle Can Be Expressed by Hounsfield Unit Measurements in Postmortem Computed Tomography—A Murine Model Study ;  Yamada, Tsuyoshi; Takeuchi, Tamaki; Ito, Morihiro ;  Journal of Medical Imaging and Health Informatics, Volume 9, Number 2 February 2019, pp. 261-266(6) (doi)
  48. LIFEx-Texture: Validation of a method to compensate multicenter effects affecting CT radiomics. Orlhac F, Frouin F, Nioche C, Ayache N, Buvat I. Radiology 2019 (doi) (hal)
  49. LIFEx-Texture: Computed tomography based radiomic signature as predictive of survival and local control after stereotactic body radiation therapy in pancreatic carcinoma. Cozzi L, Comito T, Fogliata A, Franzese C, Franceschini D, Bonifacio C, Tozzi A, Di Brina L, Clerici E, Tomatis S, Reggiori G, Lobefalo F, Stravato A, Mancosu P, Zerbi A, Sollini M, Kirienko M, Chiti A, Scorsetti M. PlosOne Jan 2019 (plosone) (doi)
  50. LIFEx-Texture: Radiomics in Oncological PET/CT: a Methodological Overview. Seunggyun Ha, Hongyoon Choi, Jin Chul Paeng, Gi Jeong Cheon. Nuclear Medicine and Molecular Imaging Jan 2019 (springer)