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  • LIFEx-texture: Sollini, M., Bartoli, F., Cavinato, L. et al. [18F]FMCH PET/CT biomarkers and similarity analysis to refine the definition of oligometastatic prostate cancer. EJNMMI Res 11, 119 (2021) (doi)
  • LIFEx-texture: Guilherme D. Kolinger, David Vállez García, Gerbrand M. Kramer, Virginie Frings, Gerben J.C. Zwezerijnen, Egbert F. Smit, Adrianus J. de Langen, Irène Buvat, and Ronald Boellaard. Use-cases for 18F-FDG PET radiomics based on uptake time dependence in non-small cell lung cancer. Journal of Nuclear Medicine, SNMMI, 2021 (doi)
  • LIFEx-texture:Yeye Zhou, Yuchun Zhu, Zhiqiang Chen, Jihui Li, Shibiao Sang and Shengming Deng. Radiomic Features of 18F-FDG PET in Hodgkin Lymphoma Are Predictive of Outcomes. Contrast Media & Molecular Imaging Volume 2021, Article ID 6347404, 8 pages (doi)
  • LIFEx-MTV-texture: M Kimura, I Kato, K Ishibashi, K Hashimoto, H Tsuji, Y Sone, M Umemura, T Nagao. Texture analysis of 18F-FDG PET images for the detection of cervical lymph node metastases in patients with oral squamous cell carcinoma. Advances in Oral and Maxillofacial Surgery. Volume 5, January–March 2022, 100228 (doi)
  • LIFEx-MTV-texture: Hyein Ahn, Jeong Won Lee, Si-Hyong Jang, Hyun Ju Lee, Ji-Hye Lee, Mee-Hye Oh, Sang Mi Lee,
    Prognostic significance of imaging features of peritumoral adipose tissue in FDG PET/CT of patients with colorectal cancer,
    European Journal of Radiology, Volume 145, 2021 (doi)
  • LIFEx-texture: Kotaro Ito, Hirotaka Muraoka, Naohisa Hirahara, Eri Sawada, Shoya Hirohata, Kohei Otsuka, Shunya Okada, Takashi Kaneda. Quantitative assessment of mandibular bone marrow using computed tomography texture analysis for detect stage 0 medication-related osteonecrosis of the jaw. European Journal of Radiology, Volume 145, 110030, December 01, 2021 (doi)
  • LIFEx-MTV-texture: Xue Beihui, Jiang Jia, Chen Lei, Wu Sunjie, Zheng Xuan, Zheng Xiangwu, Tang Kun. Development and Validation of a Radiomics Model Based on 18F-FDG PET of Primary Gastric Cancer for Predicting Peritoneal Metastasis. Front. Oncol., 26 October 2021 (doi)
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  • LIFEx-texture: Kim, J.; Jeong, S.Y.; Kim, B.-C.; Byun, B.-H.; Lim, I.; Kong, C.-B.; Song, W.S.; Lim, S.M.; Woo, S.-K. Prediction of Neoadjuvant Chemotherapy Response in Osteosarcoma Using Convolutional Neural Network of Tumor Center 18F-FDG PET Images. Diagnostics 2021, 11, 1976 (doi)
  • LIFEx-texture: Xue B, Jiang J, Chen L, Wu S, Zheng X, Zheng X and Tang K (2021) Development and Validation of a Radiomics Model Based on 18F-FDG PET of Primary Gastric Cancer for Predicting Peritoneal Metastasis. Front. Oncol. 11:740111 (doi)
  • LIFEx-texture: Fereshteh Yousefirizi, Pierre Decazes, Amine Amyar, Su Ruan, Babak Saboury, Arman Rahmim. Artificial Intelligence-Based Detection, Classification and Prediction/Prognosis in PET Imaging: Towards Radiophenomics. PET Clinics, Volume 17, Issue 1, 2021 (doi)
  • LIFEx-texture: Zhao Y, Chen R, Zhang T, Chen C, Muhelisa M, Huang J, Xu Y and Ma X (2021) MRI-Based Machine Learning in Differentiation Between Benign and Malignant Breast Lesions. Front. Oncol. 11:552634 (doi)
  • LIFEx-MTV: Hande Melike Bülbül, Ogün Bülbül, Sülen Sarıoğlu, Özhan Özdoğan, Ersoy Doğan, Nuri Karabay. Relationships Between DCE-MRI, DWI, and 18 F-FDG PET/CT Parameters with Tumor Grade and Stage in Patients with Head and Neck Squamous Cell Carcinoma. Mol Imaging Radionucl Ther 2021;30:177-186 (doi)
  • LIFEx-texture: Lee JW, Kim SY, Han SW, Lee JE, Hong SH, Lee SM, Jo IY. Clinical Significance of Peritumoral Adipose Tissue PET/CT Imaging Features for Predicting Axillary Lymph Node Metastasis in Patients with Breast Cancer. Journal of Personalized Medicine. 2021; 11(10):1029 (doi)
  • LIFEx-PT-COMP: Zaragori T, Doyen M, Rech F, Blonski M, Taillandier L, Imbert L and Verger A (2021) Dynamic 18F-FDopa PET Imaging for Newly Diagnosed Gliomas: Is a Semiquantitative Model Sufficient? Front. Oncol. 11:735257. doi: 10.3389/fonc.2021.735257(doi)
  • LIFEx-texture: Maëlle Dade, Marine Giry, Giulia Berzero, Marion Benazra, Gilles Huberfeld, Delphine Leclercq, Vincent Navarro, Jean-Yves Delattre, Dimitri Psimaras, Agusti Alentorn. Quantitative brain imaging analysis of neurological syndromes associated with anti-GAD antibodies. NeuroImage: Clinical, Volume 32, 2021, 102826, ISSN 2213-1582 (doi)
  • LIFEx-texture: valuation of 68Ga-PSMA PET/CT with Volumetric Parameters for Staging of Prostate Cancer Patients: Erratum, Nuclear Medicine Communications: October 2021 - Volume 42 - Issue 10 - p 1186 (doi)
  • LIFEx-texture: Flaus, A., Habouzit, V., De Leiris, N. et al. FDG PET biomarkers for prediction of survival in metastatic melanoma prior to anti-PD1 immunotherapy. Sci Rep 11, 18795 (2021) (doi)
  • LIFEx-texture: Shozo Yamashita, Koichi Okuda, Tetsu Nakaichi, Haruki Yamamoto and Kunihiko Yokoyama.Texture Feature Comparison Between Step-and-Shoot and Continuous-Bed-Motion 18F-FDG PET. Journal of Nuclear Medicine Technology March 2021, 49 (1) 58-64 (doi)
  • LIFEx-texture: Mengmeng Yan, Weidong Wang. A radiomics model of predicting tumor volume change of patients with stage III non-small cell lung cancer after radiotherapy. Science Progress
    2021, Vol. 104(1) 1-10 (doi)
  • LIFEx-texture: Zhang, L., Zhao, H., Jiang, H. et al. 18F-FDG texture analysis predicts the pathological Fuhrman nuclear grade of clear cell renal cell carcinoma. Abdom Radiol (2021) (doi)
  • LIFEx-texture: Xu, Hanyue; Zou, Xiuhe; Zhao, Yunuo; Zhang, Tao; Tang, Youyin; Zheng, Aiping; Zhou, Xianghong; Ma, Xuelei. Differentiation of Intrahepatic Cholangiocarcinoma and Hepatic Lymphoma Based on Radiomics and Machine Learning in Contrast-Enhanced Computer Tomography. Technol Cancer Res Treat ; 20: 15330338211039125, 2021 (doi)
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  • LIFEx-texture: Zhong-Wei Chen, Kun Tang, You-Fan Zhao, Yang-Zong Chen, Liang-Jie Tang, Gang Li, Ou-Yang Huang, Xiao-Dong Wang, Giovanni Targher, Christopher D. Byrne, Xiang-Wu Zheng and Ming-Hua Zheng. Radiomics based on fluoro-deoxyglucose positron emission tomography predicts liver fibrosis in biopsy-proven MAFLD: a pilot study. Int. J. Med. Sci. 2021, Vol 18(16): 3624-3630 (doi)
  • LIFEx-texture: Yang, N., Liu, F., Li, C. et al. Diagnostic classification of coronavirus disease 2019 (COVID-19) and other pneumonias using radiomics features in CT chest images. Sci Rep 11, 17885 (2021) (doi)
  • LIFEx-texture: Chong, G.O.; Park, S.-H.; Jeong, S.Y.; Kim, S.J.; Park, N.J.-Y.; Lee, Y.H.; Lee, S.-W.; Hong, D.G.; Park, J.Y.; Han, H.S. Prediction Model for Tumor Budding Status Using the Radiomic Features of F-18 Fluorodeoxyglucose Positron Emission Tomography/Computed Tomography in Cervical Cancer. Diagnostics 2021, 11, 1517 (doi)
  • LIFEx-texture: Yuki Arita and Soichiro Yoshida and Thomas C. Kwee and Hirotaka Akita and Shigeo and Yuki Iwaita and Kiyoko Mukai and Shunya Matsumoto and Ryo and Ryota and Ryuichi Mizuno and Yasuhisa Fujii and Mototsugu Oya and Masahiro Jinzaki. Diagnostic Value of Texture Analysis of Apparent Diffusion Coefficient Maps for Differentiating Fat-Poor Angiomyolipoma from Non-Clear-Cell Renal Cell Carcinoma. European Journal of Radiology. p109895, 0720-048X; 2021 (doi)
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  • LIFEx-texture: Ren, H., Mori, N., Mugikura, S. et al. Prediction of placenta accreta spectrum using texture analysis on coronal and sagittal T2-weighted imaging. Abdom Radiol (2021) (doi)
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  • LIFEx-texture: Su C-W, Lee J-C, Chang Y-F, et al. Delta-volume radiomics of induction chemotherapy to predict outcome of subsequent chemoradiotherapy for locally advanced hypopharyngeal cancer. Tumori Journal. August 2021 (doi)
  • LIFEx-texture: Javier González-Viguera, Gabriel Reynés-Llompart, Alicia Lozano. Outcomes and computed tomography radiomic features extraction in soft tissue sarcomas treated with neoadjuvant radiation therapy. Reports of practical oncology and radiotherapy. 2021-08-13 (doi)
  • LIFEx-texture: Karmazanovsky, G., Gruzdev, I., Tikhonova, V. et al. Computed tomography-based radiomics approach in pancreatic tumors characterization. Radiol med (2021) (doi)
  • LIFEx-viewer: Chen C, Cheng Y, Xu J, Zhang T, Shu X, Huang W, Hua Y, Zhang Y, Teng Y, Zhang L, Xu J. Automatic Meningioma Segmentation and Grading Prediction: A Hybrid Deep-Learning Method. Journal of Personalized Medicine. 2021; 11(8):786 (doi)
  • LIFEx-texture: Bracci, S., Dolciami, M., Trobiani, C. et al. Quantitative CT texture analysis in predicting PD-L1 expression in locally advanced or metastatic NSCLC patients. Radiol med (2021) (doi)
  • LIFEx-texture: Tang, Y., Zhang, T., Zhou, X. et al. The preoperative prognostic value of the radiomics nomogram based on CT combined with machine learning in patients with intrahepatic cholangiocarcinoma. World J Surg Onc 19, 45 (2021) (doi)
  • LIFEx-texture: Hainan Ren, Naoko Mori, Shunji Mugikura, Hiroaki Shimizu, Sakiko Kageyama, Masatoshi Saito, Kei Takase. Prediction of placenta accreta spectrum using texture analysis on coronal and sagittal T2‑weighted imaging. Abdominal Radiology. 20 July 2021 (doi)
  • LIFEx-texture: Orkun Sarioglu, Fatma C Sarioglu, Ahmet E Capar, Demet Fb Sokmez, Berna D Mete, Umit Belet. Clot-based radiomics features predict first pass effect in acute ischemic stroke. Interv Neuroradiol. 2021 May 18;15910199211019176 (doi)
  • LIFEx-texture: Baba, A., Kessoku, H., Akutsu, T. et al. Pre-treatment MRI predictor of high-grade malignant parotid gland cancer. Oral Radiol (2021)(doi)
  • LIFEx-texture: Chen B, Chen C, Wang J, Teng Y, Ma X and Xu J (2021) Differentiation of Low-Grade Astrocytoma From Anaplastic Astrocytoma Using Radiomics-Based Machine Learning Techniques. Front. Oncol. 11:521313. (doi)
  • LIFEx-texture: Girot, C., Volk, A., Walczak, C. et al. New method for quantification of intratumoral heterogeneity: a feasibility study on Ktrans maps from preclinical DCE-MRI. Magn Reson Mater Phy (2021) (doi)
  • LIFEx-texture: Elkilany, A., Fehrenbach, U., Auer, T.A. et al. A radiomics-based model to classify the etiology of liver cirrhosis using gadoxetic acid-enhanced MRI. Sci Rep 11, 10778 (2021) (doi)
  • LIFEx-texture: Timothée Zaragori, Julien Oster, Veronique Roch, Gabriela Hossu, Mohammad Bilal Chawki, Rachel Grignon, Celso Pouget, Guillaume Gauchotte, Fabien Rech, Marie Blonski, Luc Taillandier, Laëtitia Imbert and Antoine Verger. 18F-FDOPA PET for the non-invasive prediction of glioma molecular parameters: a radiomics study. Journal of Nuclear Medicine May 2021, jnumed.120.261545 (doi)
  • LIFEx-MTV: François Allioux, Damaj Gandhi, Jean-Pierre Vilque, Cathy Nganoa, AnneClaire Gac, Nicolas Aide & Charline Lasnon (2021): End-of-treatment 18F-FDG PET/CT in diffuse large B cell lymphoma patients: ∆SUV outperforms Deauville score, Leukemia & Lymphoma (doi)
  • LIFEx-viewer: Francesco Bianconi, Mario Luca Fravolini, Sofia Pizzoli, Isabella Palumbo, Matteo Minestrini, Maria Rondini, Susanna Nuvoli, Angela Spanu, Barbara Palumbo. Comparative evaluation of conventional and deep learning methods for semi-automated segmentation of pulmonary nodules on CT. Quant Imaging Med Surg 2021;11(7):3286-3305 (doi)
  • LIFEx-texture: Mahmoud M.A., Shihab M., Saad SS., Elhussiny F., Houseni M. Imaging differentiation of malignant hepatic tumors: radiomics and metabolic features of 18F-FDG PET/CT. REJR 2021; 11(2):165-170 (doi)
  • LIFEx-texture: Friconnet, G. Exploring the correlation between semantic descriptors and texture analysis features in brain MRI. Chin J Acad Radiol 4, 105–115 (2021)(doi)
  • LIFEx-texture: Zeydanli, T., Kilic, H.K. Performance of quantitative CT texture analysis in differentiation of gastric tumors. Jpn J Radiol (2021) (doi)
  • Zeydanli, T., Kilic, H.K. Performance of quantitative CT texture analysis in differentiation of gastric tumors. Jpn J Radiol 2021 (doi)
  • LIFEx-texture: P Vincenta, ME. Maeder, B Hunt, B Linn, T MangelsDick, T Hasan, KK. Wan and BW. Pogue. CT Radiomic Features of Photodynamic Priming in Clinical Pancreatic Adenocarcinoma Treatment. 2021 Phys. Med. Biol (doi)
  • LIFEx-texture: Lee JW, Park S-H, Ahn H, Lee SM, Jang SJ. Predicting Survival in Patients with Pancreatic Cancer by Integrating Bone Marrow FDG Uptake and Radiomic Features of Primary Tumor in PET/CT. Cancers. 2021; 13(14):3563 (doi)
  • LIFEx-texture: Tu SJ, Tran VT, Teo JM, Chong WC, Tseng JR. Utility of radiomic zones for risk classification and clinical outcome predictions using supervised machine learning during simultaneous 11 C-choline PET/MRI acquisition in prostate cancer patients. Med Phys. 2021 Jul 2 (doi)
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  • LIFEx-texture: The Clinical Impact of the Late Imaging with 18F-Fluorodeoxyglucose PET Texture Analysis in Invasive Lobular Breast Cancer. FO FALAY, H SEYMEN - Turk J Oncol 2021;36(3):273–84 (doi)
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  • LIFEx-texture: Aboelyazid Elkilany, Uli Fehrenbach, Timo Alexander Auer, Tobias Müller, Wenzel Schöning, Bernd Hamm1 & Dominik Geisel.  A radiomics‑based model to classify the etiology of liver cirrhosis using gadoxetic acid‑enhanced MRIScientific Reports | (2021) 11:10778 (doi)
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  • LIFEx-texture: Iodine Map Radiomics in Breast Cancer: Prediction of Metastatic Status by Lukas Lenga,Simon Bernatz,Simon S. Martin,Christian Booz,Christine Solbach,Rotraud Mulert-Ernst,Thomas J. Vogl andDoris Leithner.Cancers 2021, 13(10), 2431 (doi)
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  • LIFEx-texture: Friconnet, G. Exploring the correlation between semantic descriptors and texture analysis features in brain MRI. Chin J Acad Radiol (2021) (doi)
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  • LIFEx-texture: Daria Ripani, Carmelo Caldarella, Tommaso Za, Elena Rossi, Valerio De Stefano, Alessandro Giordano. Progression to symptomatic multiple myeloma predicted by texture analysis-derived parameters in patients without focal disease at 18F-FDG PET/CT. Clinical Lymphoma Myeloma and Leukemia 2021 (doi)
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  • LIFEx-texture: Crombé, A., Buy, X., Han, F., Toupin, S. and Kind, M. (2021), Assessment of Repeatability, Reproducibility, and Performances of T2 Mapping‐Based Radiomics Features: A Comparative Study. J Magn Reson Imaging (doi)
  • LIFEx-MTV: Have Volume-based Parameters of Positron Emission Tomography/Computed Tomography Prognostic Relevance for Patients With Potentially Platinum-responsive Recurrent Ovarian Cancer? A Single Center Italian Study. A Gadduci, E Simonetti, F Guidoccio, G Manca, A Giorgetti, T Depalo, S Cosio, M Miccoli and D Volterrani. Anticancer Research 41: 1937-1944 (2021) (doi)
  • LIFEx-texture: Paolo Florent Felisaz, Giulia Colelli, Elena Ballante, Francesca Solazzo, Matteo Paoletti, Giancarlo Germani, Francesco Santini, Xeni Deligianni, Niels Bergsland, Mauro Monforte, Giorgio Tasca, Enzo Ricci, Stefano Bastianello, Silvia Figini, Anna Pichiecchio ; Texture analysis and machine learning to predict water T2 and fat fraction from non-quantitative MRI of thigh muscles in Facioscapulohumeral muscular dystrophy ; European Journal of Radiology 134 (2021) 109460 (doi)
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  • LIFEx-texture: Claudia E. Weber, Matthias Wittayer, Matthias Kraemer, Andreas Dabringhaus, Michael Platten, Achim Gass, Philipp Eisele ; Quantitative MRI texture analysis in chronic active multiple sclerosis lesions, Magnetic Resonance Imaging, Volume 79, 2021, Pages 97-102 (doi)
  • LIFEx-texture: Xue, B., Wu, S., Zhang, M. et al. A radiomic-based model of different contrast-enhanced CT phase for differentiate intrahepatic cholangiocarcinoma from inflammatory mass with hepatolithiasis. Abdom Radiol (2021) (doi)
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  • LIFEx-texture: Thuillier, P.; Liberini, V.; Rampado, O.; Gallio, E.; De Santi, B.; Ceci, F.; Metovic, J.; Papotti, M.; Volante, M.; Molinari, F.; et al. Diagnostic Value of Conventional PET Parameters and Radiomic Features Extracted from 18F-FDG-PET/CT for Histologic Subtype Classification and Characterization of Lung Neuroendocrine Neoplasms. Biomedicines 2021, 9, 281 (doi)
  • LIFEx-texture: Sollini, M., Kirienko, M., Cavinato, L. et al. Methodological framework for radiomics applications in Hodgkin’s lymphoma. European J Hybrid Imaging 4, 9 (2020) (doi)
  • LIFEx-texture: Amandine Crombé, Xavier Buy, Fei Han, Solenn Toupin and Michèle Kind. ORIGINAL RESEARCHAssessment of Repeatability,Reproducibility, and Performances of T2Mapping-Based Radiomics Features:A Comparative Study. J. MAGN. RESON. IMAGING 2021 (doi)
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  • LIFEx-texture: E. Forde, M. Leech, C. Robert, E. Herron, L. Marignol. Influence of inter-observer delineation variability on radiomic features of the parotid gland. Physica Medica 82 (2021) 240-248 (doi)
  • LIFEx-texture: Junjie Hang, Kequn Xu, Ruohan Yin, Yueting Shao, Muhan Liu, Haifeng Shi, Xiaoyong Wang3 and Lixia Wu. Role of CT texture features for predicting outcome of pancreatic cancer patients with liver metastases. Journal of Cancer 2021; 12(8): 2351-2358. doi: 10.7150/jca.49569 (doi)
  • LIFEx-texture: Zhang Tao, Zhang YueHua, Liu Xinglong, Xu Hanyue, Chen Chaoyue, Zhou Xuan, Liu Yichun, Ma Xuelei. Application of Radiomics Analysis Based on CT Combined With Machine Learning in Diagnostic of Pancreatic Neuroendocrine Tumors Patient’s Pathological Grades. Front. Oncol., 11 February 2021 (10)-3227 (doi)
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  • LIFEx-texture: Hayato Tomita, Tsuneo Yamashiro, Gyo Iida, Maho Tsubakimoto, Hidefumi Mimura and Sadayuki Murayama. Unenhanced CT texture analysis with machine learning for differentiating between nasopharyngeal cancer and nasopharyngeal malignant lymphoma. Nagoya J. Med. Sci. 83. 135–149, 2021 (doi)
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  • LIFEx-texture: Cepeda, S., García-García, S., Arrese, I. et al. Relationship between the overall survival in glioblastomas and the radiomic features of intraoperative ultrasound: a feasibility study. J Ultrasound (2021) (doi)
  • LIFEx-texture: Larobina, M., Megna, R. & Solla, R. Comparison of three freeware software packages for 18F-FDG PET texture feature calculation. Jpn J Radiol (2021) (doi)
  • LIFEx-texture: Yoon, H., Ha, S., Kwon, S.J. et al. Prognostic value of tumor metabolic imaging phenotype by FDG PET radiomics in HNSCC. Ann Nucl Med (2021) (doi)
  • LIFEx-texture: Virginia Liberini , Osvaldo Rampado, Elena Gallio, Bruno De Santi, Francesco Ceci, Beatrice Dionisi, Dionisi, Beatrice, Philippe Thuillier, Libero Ciuffreda, Alessandro Piovesan, Federica Fioroni, Annibale Versari, Filippo Molinari, Désirée Deandreis ; 68Ga-DOTATOC PET/CT-Based Radiomic Analysis and PRRT Outcome: A Preliminary Evaluation Based on an Exploratory Radiomic Analysis on Two Patients. Front. Med., 26 January 2021 (doi)
  • LIFEx-texture: Sarioglu, O., Sarioglu, F.C., Capar, A.E. et al. The role of CT texture analysis in predicting the clinical outcomes of acute ischemic stroke patients undergoing mechanical thrombectomy. Eur Radiol (2021) (doi)
  • LIFEx-texture: Youyin Tang, Tao Zhang, Yunuo Zhao, Zheyu Chen and Xuelei Ma. Development and validation of a comprehensive radiomics nomogram for prognostic prediction of primary hepatic sarcomatoid carcinoma after surgical resection. International Journal of Medical Sciences 2021; 18(7): 1711-1720 (doi)
  • LIFEx-texture: Jeonghyun Kang, Jae-Hoon Lee, Hye Sun Lee, Eun-Suk Cho, Eun Jung Park, Seung Hyuk Baik, Kang Young Lee, Chihyun Park, Yunku Yeu, Jean R. Clemenceau, Sunho Park, Hongming Xu, Changjin Hong and Tae Hyun Hwang. Radiomics Features of 18F-Fluorodeoxyglucose Positron-Emission Tomography as a Novel Prognostic Signature in Colorectal Cancer. Cancers 2021, 13, 392 (doi)
  • LIFEx-texture: Zhou, Y., Ma, Xl., Zhang, T. et al. Use of radiomics based on 18F-FDG PET/CT and machine learning methods to aid clinical decision-making in the classification of solitary pulmonary lesions: an innovative approach. Eur J Nucl Med Mol Imaging (2021) (doi)
  • LIFEx-texture: Beaumont, H., Iannessi, A., Bertrand, AS. et al. Harmonization of radiomic feature distributions: impact on classification of hepatic tissue in CT imaging. Eur Radiol (2021) (doi)
  • LIFEx-texture: Alongi, P., Stefano, A., Comelli, A. et al. Radiomics analysis of 18F-Choline PET/CT in the prediction of disease outcome in high-risk prostate cancer: an explorative study on machine learning feature classification in 94 patients. Eur Radiol (2021) (doi)
  • LIFEx-texture: A Radiomics-Based Imaging Tool to Monitor Tumor-Lymphocyte Infiltration and Outcome in Cancer Patients Treated by Anti-PD-1/PD-L1. United States Patent Application 20210003555. Ferte Charles (Bethesda, MD, US), Limkin Elaine Johanna (Cachan, FR), Sun Roger (Paris, FR), Deutsch Eric (Paris, FR) (doi)
  • LIFEx-texture: Wu, YJ., Liu, YC., Liao, CY. et al. A comparative study to evaluate CT-based semantic and radiomic features in preoperative diagnosis of invasive pulmonary adenocarcinomas manifesting as subsolid nodules. Sci Rep 11, 66 (2021) (doi)
  • LIFEx-MTV: Hotta, M., Minamimoto, R., Toyohara, J. et al. Efficacy of cell proliferation imaging with 4DST PET/CT for predicting the prognosis of patients with esophageal cancer: a comparison study with FDG PET/CT. Eur J Nucl Med Mol Imaging (2021) (doi)
  • LIFEx-texture: Yoo, S., Kang, S., Yoon, J. et al. Prospective evaluation of metabolic intratumoral heterogeneity in patients with advanced gastric cancer receiving palliative chemotherapy. Sci Rep 11, 296 (2021) (doi)
  • LIFEx-MTV: Hotta, M., Minamimoto, R., Toyohara, J. et al. Efficacy of cell proliferation imaging with 4DST PET/CT for predicting the prognosis of patients with esophageal cancer: a comparison study with FDG PET/CT. Eur J Nucl Med Mol Imaging (2021) (doi)
  • LIFEx-texture: Nicolas Aide, Nicolas Elie, Cécile Blanc-Fournier, Christelle Levy, Thibault Salomon and Charline Lasnon ; Hormonal Receptor Immunochemistry Heterogeneity and 18F-FDG Metabolic Heterogeneity: Preliminary Results of Their Relationship and Prognostic Value in Luminal Non-Metastatic Breast Cancers ; Front. Oncol., 12 January 2021 (doi)
  • LIFEx-MTV: Prigent, K., Lasnon, C., Ezine, E. et al. Assessing immune organs on 18F-FDG PET/CT imaging for therapy monitoring of immune checkpoint inhibitors: inter-observer variability, prognostic value and evolution during the treatment course of melanoma patients. Eur J Nucl Med Mol Imaging (2021) (doi)
  • LIFEx-texture: Li, Y., Zhang, Y., Fang, Q. et al.  Radiomics analysis of [18F]FDG PET/CT for microvascular invasion and prognosis prediction in very-early- and early-stage hepatocellular carcinoma. Eur J Nucl Med Mol Imaging (2021) (doi)
  • LIFEx-texture: Sheen, H., Kim, J.S., Lee, J.K. et al. A radiomics nomogram for predicting transcatheter arterial chemoembolization refractoriness of hepatocellular carcinoma without extrahepatic metastasis or macrovascular invasion. Abdom Radiol (2021) (doi)
  • LIFEx-texture: Sheen, H., Kim, J.S., Lee, J.K. et al A radiomics nomogram for predicting transcatheter arterial chemoembolization refractoriness of hepatocellular carcinoma without extrahepatic metastasis or macrovascular invasion. Abdom Radiol (2021). (doi)

About LIFEx (Under review):

  • LIFEx-texture: Peter McAnena, Brian Moloney, Robert Browne, Niamh O’Halloran, Leon Walsh, Sinead Walsh, Declan Sheppard, Karl Sweeney, Michael Kerin, Aoife Lowery. A Radiomic Model To Classify Response To Neoadjuvant Chemotherapy in Breast Cancer. Research Square 2021 (doi)

About LIFEx (but not verified):

  • LIFEx-texture: Nakajo, M., Jinguji, M., Tani, A. et al. Machine learning based evaluation of clinical and pretreatment 18F-FDG-PET/CT radiomic features to predict prognosis of cervical cancer patients. Abdom Radiol (2021) (doi)
  • LIFEx-texture: Navid Hasani, Sriram S. Paravastu, Faraz Farhadi, Fereshteh Yousefirizi, Michael A. Morris, Arman Rahmim, Mark Roschewski, Ronald M. Summers, Babak Saboury. Artificial Intelligence in Lymphoma PET Imaging: A Scoping Review (Current Trends and Future Directions). PET Clinics. Vol 17, Issue 1, P145-174, Jan 01, 2022 (doi)
  • LIFEx-texture: Kevin Ma, Stephanie A, Harmon, Ivan S, Klyuzhin, Arman Rahmim, DABSNM Baris Turkbey. Clinical Application of Artificial Intelligence in Positron Emission Tomography: Imaging of Prostate Cancer. PET Clinics Vol 17, Issue 1, P137-143, Jan 01, 2022 (doi)
  • LIFEx-texture : Isil Basara Akin, Hakan Abdullah Ozgul, Canan Altay, Merih Guray Durak, Suleyman Ozkan Akso, Ali Ibrahim Sevinc, Mustafa Secil, Hakan Gulmez, Pinar Balci. Machine Learning-Based Ultrasound Texture Analysis in Differentiation of Benign Phyllodes Tumors from Borderline-Malignant Phyllodes Tumors. Ultraschall Me 2021 (doi)
  • LIFEx-texture: Dhirajlal Rajgor A., Patel S, McCulloch D, Obara B, Bacardit J, McQueen A, Aboagye E, Ali T, O’Hara J and Winston Hamilton D. The application of radiomics in laryngeal cancer.  The British Institute of Radiology. 29 Sep 2021 (doi)
  • LIFEx-viewer: Thuilliera P, Liberinia V, Grimaldia S, Rampado O, Gallio E, De Santi B, Arvat E, Piovesan A, Filippi R, Molinari F, Deandreis A. Valeur pronostique des paramètres volumétriques corps entier extraits de la TEP/TDM au 68Ga-DOTATOC dans les tumeurs neuroendocrines bien différenciées. JO  - Annales d'Endocrinologie Volume 82, issue 5, October 2021, Page 274 (doi)
  • LIFEx-texture: Thuillier, Philippe; Bourhis, David; Schick, Ulrike; Alavi, Zarrin; Guezennec, Catherine; Robin, Philippe; Kerlan, Véronique; Salaun, Pierre-Yve; Abgral, Ronan. Diagnostic value of positron-emission tomography textural indices for malignancy of 18F-fluorodeoxyglucose-avid adrenal lesions. Q J Nucl Med Mol Imaging ; 65(1): 79-87, 2021 Mar (doi)
  • LIFEx-texture: Hyun, Seung Hyup; Ahn, Mi Sun; Koh, Young Wha; Lee, Su Jin. A Machine-Learning Approach Using PET-Based Radiomics to Predict the Histological Subtypes of Lung Cancer. Clinical Nuclear Medicine: December 2019 - Volume 44 - Issue 12 - p 956-960 (doi)
  • LIFEx-texture: Sha ZHU, Hui XU, Chuyu SHEN, Yingjie WANG, Wenting XU, Shihao DUAN, Hanxiao CHEN, Xuejin OU, Linyan CHEN, Xuelei MA. Differential diagnostic ability of 18F-FDG PET/CT radiomics features between renal cell carcinoma and renal lymphoma. The Quarterly Journal of Nuclear Medicine and Molecular Imaging 2021 March;65(1):72-8 (doi)
  • LIFEx-texture: Tutino, Francesca; Puccini, Giulia; Linguanti, Flavia; Puccini, Benedetta; Rigacci, Luigi; Kovalchuk, Sofya; Sciagrà, Roberto; Berti, Valentina. Baseline metabolic tumor volume calculation using different SUV thresholding methods in Hodgkin lymphoma patients: interobserver agreement and reproducibility across software platforms. Nucl Med Commun ; 42(3): 284-291, 2021 Mar 01 (doi)

About LIFEx (Failure to comply with the LIFEx license agreement):

  • LIFEx-MTV: Annovazzi, A., Ferraresi, V., Rea, S. et al. Prognostic value of total metabolic tumour volume and therapy-response assessment by [18F]FDG PET/CT in patients with metastatic melanoma treated with BRAF/MEK inhibitors. Eur Radiol (2021) (doi)
  • LIFEx-texture: Kotaro Ito DDS, PhD , Hirotaka Muraoka DDS, PhD , Naohisa Hirahara DDS, PhD , Eri Sawada DDS, PhD , Satoshi Tokunaga DDS, PhD , Takashi Kaneda DDS, PhD , Quantitative assessment of the parotid gland using computed tomography texture analysis to detect parotid sialadenitis, Oral Surg Oral Med Oral Pathol Oral Radiol (2021), (doi)
  • LIFEx-viewer: Martinez- Perez R, Kortz MW, Ung TH, Rayo N, Lagares A, Cepeda S. Third Ventricle Volume Predicts Functional Outcome in Chronic Subdural Hematoma. Acta Neurol Scand.  2021;00:1– 8 (doi)
  • LIFEx-texture: Mahmoud M.A., Shihab M., Saad SS., Elhussiny F., Houseni M. Effect of standardized uptake value discretization on radiomics features of liver tumors using 18FDG-PET/CT scan. REJR 2021; 11(3):132-137. DOI: 10.21569/2222-7415-2021-11-3-132-137 (doi)
  • LIFEx-texture: Zhang, X., Chen, L., Jiang, H. et al. A novel analytic approach for outcome prediction in diffuse large B-cell lymphoma by [18F]FDG PET/CT. Eur J Nucl Med Mol Imaging (2021). (doi)
  • LIFEx-texture: Mengmeng Yan and Weidong Wang. A radiomics model of predicting tumor volume change of patients with stage III non-small cell lung cancer after radiotherapy. Science Progress 2021, Vol. 104(1) 1–10 (doi)
  • LIFEx-texture: Wallis, D., Soussan, M., Lacroix, M. et al. An [18F]FDG-PET/CT deep learning method for fully automated detection of pathological mediastinal lymph nodes in lung cancer patients. Eur J Nucl Med Mol Imaging (2021). (doi)
  • LIFEx-texture: Piaopaio Ying, Wenyi Jin, Xiaoli Wu and Weiyang Cai. Association between CT-Quantified Body Composition and Recurrence, Survival in Nonmetastasis Colorectal Cancer Patients Underwent Regular Chemotherapy after Surgery" recently published in BioMed Research International. Artificial Intelligence for Medical Image Analysis.Volume 2021, Article ID 6657566 (doi)
  • LIFEx-texture: Samy Ammari, Stephanie Pitre Champagnat, Laurent Dercle, sylvain reuze, sebastien Diffetocq, tite mokoyoko, salma moalla, sara lakiss, joya hadchiti, emilie chouzenoux, corinne balleyguier, nathalie lassau, francois bidault. Influence of Magnetic Field Strength on Magnetic Resonance Imaging Radiomics Features in Brain Imaging. Frontiers in Oncology, Frontiers, 2021 (doi)
  • LIFEx-texture: Xiaozhen Y, Chunwang Y, Yinghua Z, Zhenchang W. Magnetic resonance radiomics signatures for predicting poorly differentiated hepatocellularcarcinomaA SQUIRE-compliant study; Medicine (2021) 100:19 (doi)
  • LIFEx-texture: Roberto Cannella, Riccardo Sartoris, Jules Grégory, Lorenzo Garzelli, Valérie Vilgrain, Maxime Ronot and Marco Dioguardi Burgio. Quantitative magnetic resonance imaging for focal liver lesions: bridging the gap between research and clinical practice. The British Journal of Radiology. Vol. 94, No. 1122 (doi)
  • LIFEx-texture: Effect of Chemotherapy on Liver Metabolism as Measured by PET/CT scan. Shaimaa A. Ahmed, AIDA Salama, Mohamed Mohamed Houseni, Asmaa A A Elsheshiny. Egypt. J. Biophys. Biomed. Engng. Vol. 21, No.1,pp.75-85 (2020) (doi)
  • LIFEx-texture: Xuehan Hu, Xun Sun, Fan Hu, Fang Liu, Weiwei Ruan, Tingfan Wu, Rui An, Xiaoli Lan. Multivariate radiomics models based on 18F-FDG hybrid PET/MRI for distinguishing between Parkinson’s disease and multiple system atrophy (doi)
  • LIFEx-texture: Yuhan YangXuelei MaYixi WangXinyan Ding. Prognosis prediction of extremity and trunk wall soft-tissue sarcomas treated with surgical resection with radiomic analysis based on random survival forest. Updates in surgery. 2021 May 18 (doi)

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