👤 SJ Knox

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Also published as: C. Knox, S Knox,
articles
H Zhou, J Ferlay, RL Siegel +660 more · 2025 · Oncology Reports · added 2026-04-20
H Zhou, J Ferlay, RL Siegel, M Laversanne, I Soerjomataram, A Jemal, F Bray, PS Steeg, KD Miller, HE Fuchs, FX Xu, YL Zhang, JJ Liu, DD Zhang, HB Chen, K Saxena, MK Jolly, JA Bertout, SA Patel, MC Simon, X Meng, FM Kong, J Yu, A Challapalli, L Carroll, EO Aboagye, DC Hinshaw, LA Shevde, P Desai, N Takahashi, R Kumar, S Nichols, J Malin, A Hunt, C Schultz, Y Cao, D Tillo, D Nousome, FF Tam, KL Ning, M Lee, JM Dumlao, JC Choy, AA Tirpe, D Gulei, SM Ciortea, C Crivii, I Berindan-Neagoe, EB Rankin, AJ Giaccia, GN Masoud, W Li, Y Della Rocca, L Fonticoli, TS Rajan, O Trubiani, S Caputi, F Diomede, J Pizzicannella, GD Marconi, SG Zeng, X Lin, JC Liu, J Zhou, RY Hapke, SM Haake, S Musleh Ud Din, SG Streit, BT Huynh, C Hana, AN Abraham, A Hussein, S Liu, Y Zhan, J Luo, J Feng, J Lu, H Zheng, Q Wen, S Fan, C Wang, S Xu, X Yang, W Luo, H Hu, R Chang, J Zhong, M Knabel, R O'Meally, RN Cole, A Pandey, GL Semenza, Y Wei, D Wang, F Jin, Z Bian, L Li, H Liang, M Li, L Shi, C Pan, D Zhu, X Ji, R Zhu, C Gao, H Xie, X Gong, H Jiang, H Zhao, M Zhang, Y He, X Li, Y Xu, X Liu, S Jiang, R Wang, H Yan, L Jin, X Dou, D Chen, V Becker, X Yuan, AS Boewe, E Ampofo, E Ebert, J Hohneck, RM Bohle, E Meese, Y Zhao, MD Menger, J Zhao, CR Qiao, Z Ding, YL Sheng, XN Li, Y Yang, DY Zhu, CY Zhang, DL Liu, K Wu, S Zhao, C Han, Y Zhang, F Liu, J Ren, HL Yin, HW Xu, QY Lin, RD Leone, JD Powell, Z Yu, J Zou, F Xu, J Jin, G Yu, J Gu, S Yang, X Wang, Y Wu, J Wei, J Xu, AL Jackson, B Zhou, WY Kim, KL Eales, KER Hollinshead, DA Tennant, E Dai, W Wang, Y Li, D Ye, R Courtnay, DC Ngo, N Malik, K Ververis, SM Tortorella, TC Karagiannis, F Luo, N Yan, S Li, G Cao, Q Cheng, Q Xia, H Wang, S Shang, MZ Wang, Z Xing, N He, H Nisar, PM Sanchidrián González, M Brauny, FM Labonté, C Schmitz, MD Roggan, B Konda, CE Hellweg, Z Guo, L Hu, Q Wang, Y Wang, XP Liu, C Chen, W Hu, X Zhang, C Liang, C Wu, S Wan, L Xu, S Wang, J Wang, X Huang, C Zhang, L Zhou, Y Du, C Li, H Ren, L Zheng, PE Porporato, N Filigheddu, JMB Pedro, G Kroemer, L Galluzzi, OT Brustugun, RX Huang, PK Zhou, H Chen, Z Han, Q Luo, Q Li, H Zuo, L Gong, C Liu, S Han, T Zhou, LY Zhang, JZ He, ZM Miao, YY Li, YM Zhang, ZW Liu, SZ Zhang, Y Chen, GC Zhou, YQ Liu, LH Gray, AD Conger, M Ebert, S Hornsey, OC Scott, AB Herrera-Campos, E Zamudio-Martinez, D Delgado-Bellido, M Fernández-Cortés, LM Montuenga, FJ Oliver, A Garcia-Diaz, Q Guo, F Lan, X Yan, Z Xiao, Q Zhang, S Roy, S Kumaravel, A Sharma, CL Duran, KJ Bayless, S Chakraborty, CY Hu, CF Hung, PC Chen, JY Hsu, CT Wang, MD Lai, YS Tsai, AL Shiau, GS Shieh, CL Wu, A Mancino, T Schioppa, P Larghi, F Pasqualini, M Nebuloni, IH Chen, S Sozzani, JM Austyn, A Mantovani, A Sica, X Peng, J Huang, Y Tao, HK Eltzschig, LF Thompson, J Karhausen, RJ Cotta, JC Ibla, SC Robson, SP Colgan, J Li, L Wang, X Chen, Y Ping, L Huang, D Yue, Z Zhang, F Wang, SM An, HM Lei, XP Ding, F Sun, YB Tang, HZ Chen, Y Shen, L Zhu, A Kogita, Y Togashi, H Hayashi, S Sogabe, M Terashima, MA De Velasco, K Sakai, Y Fujita, S Tomida, Y Takeyama, S Karan, MY Cho, H Lee, HS Park, M Sundararajan, JL Sessler, KS Hong, MHY Cheng, Y Mo, G Zheng, LC Clark, R Wolf, D Granger, Z Taylor, X Sun, G Niu, N Chan, B Shen, MV Shirmanova, MM Lukina, MA Sirotkina, LE Shimolina, VV Dudenkova, NI Ignatova, S Tobita, VI Shcheslavskiy, EV Zagaynova, JM Vanderkooi, G Maniara, TJ Green, DF Wilson, CJ Koch, SM Evans, MR Horsman, BS Sørensen, M Busk, DW Siemann, C Huang, J Liang, X Lei, X Xu, L Luo, X Hu, J Gou, W Lin, F Yang, C Liao, D Nasri, R Manwar, A Kaushik, EE Er, K Avanaki, KA Krohn, JM Link, RP Mason, JR Brender, Y Saida, N Devasahayam, MC Krishna, S Kishimoto, I Godet, S Doctorman, F Wu, DM Gilkes, K Matsumoto, JB Mitchell, W Qin, C Xu, C Yu, S Shen, W Huang, DS Vikram, JL Zweier, P Kuppusamy, B Epel, MK Bowman, C Mailer, HJ Halpern, B Hao, H Dong, R Xiong, C Song, N Li, Q Geng, R Zhang, L Lai, J He, D You, W Duan, X Dong, Y Zhu, L Lin, C Ostheimer, M Bache, A Güttler, M Kotzsch, D Vordermark, A Giatromanolaki, AL Harris, AH Banham, CA Contrafouris, MI Koukourakis, H Geng, L Chen, S Lv, SJ Kim, ZN Rabbani, RT Vollmer, EG Schreiber, E Oosterwijk, MW Dewhirst, Z Vujaskovic, MJ Kelley, D Coppola, M Szabo, D Boulware, P Muraca, M Alsarraj, AF Chambers, TJ Yeatman, T Reese, K Stępień, RP Ostrowski, E Matyja, SW Kim, IK Kim, JH Ha, CD Yeo, HH Kang, JW Kim, SH Lee, O Thews, P Vaupel, M Heyboer, D Sharma, W Santiago, N McCulloch, LW Jones, BL Viglianti, JA Tashjian, SM Kothadia, ST Keir, SJ Freedland, MQ Potter, EJ Moon, T Schroeder, JE Herndon, S Jo, J Jeon, G Park, HK Do, J Kang, KJ Ahn, SY Ma, YM Choi, D Kim, B Youn, Y Ki, P Ghosh, C Vidal, S Dey, L Zhang, TM Ashton, WG McKenna, LA Kunz-Schughart, GS Higgins, B Kalyanaraman, G Cheng, M Hardy, M You, M Shameem, AJ Bagherpoor, A Nakhi, P Dosa, G Georg, F Kassie, M Skwarski, DR McGowan, E Belcher, F Di Chiara, D Stavroulias, M McCole, JL Derham, KY Chu, E Teoh, J Chauhan, M Benej, X Hong, S Vibhute, S Scott, J Wu, E Graves, QT Le, AC Koong, B Yu, S Sohoni, T Wang, SP Kalainayakan, PC Konduri, A Ashrafi, P Modareszadeh, N Salamat, PS Alemi, E Berisha, TW Secomb, V Sukhatme, G Bouche, L Meheus, VP Sukhatme, P Pantziarka, BJT Reymen, MW van Gisbergen, AJG Even, CML Zegers, M Das, E Vegt, JE Wildberger, FM Mottaghy, A Yaromina, LJ Dubois, PP Wong, N Bodrug, KM Hodivala-Dilke, S Guelfi, K Hodivala-Dilke, G Bergers, C Wigerup, S Påhlman, D Bexell, Y Xia, HK Choi, K Lee, L Iommarini, AM Porcelli, G Gasparre, I Kurelac, N Albadari, S Deng, J Ma, K Cao, X Ling, P Zhang, J Zhu, H Deng, P Li, Q Hang, Y Jin, M Chen, MS Lara, CM Blakely, JW Riess, H Zhu, S Zhang, W Tian, C Cao, L Shu, A Mahdi, B Darvishi, K Majidzadeh-A, M Salehi, L Farahmand, Z Xie, T Zou, JL Bryant, SL Meredith, KJ Williams, A White, WR Wilson, MP Hay, SX Chen, J Zhang, F Xue, W Liu, Y Kuang, B Gu, S Song, F Shepherd, G Koschel, J Von Pawel, U Gatzmeier, N Van Zandwiyk, P Woll, R Van Klavren, P Krasko, P Desimone, M Nicolson, L Marcu, I Olver, K Graham, E Unger, D Lindsay, CM Garvey, SM Mumenthaler, J Foo, C Meaney, GG Powathil, P Lambin, M Kohandel, BT Oronsky, SJ Knox, JJ Scicinski, B Oronsky, J Scicinski, S Ning, D Peehl, A Oronsky, P Cabrales, M Bednarski, S Knox, L Zhao, C Shen, Y Luo, X Hou, Y Qi, Z Huang, L Gao, M Wu, Y Zhou, X Feng, Z Wu, X Rao, R Zhou, R Meng, P Dey, R Das, S Chatterjee, R Paul, U Ghosh, Y Demizu, O Fujii, H Iwata, N Fuwa, SM Bentzen, V Gregoire, G Meijer, J Steenhuijsen, M Bal, K De Jaeger, D Schuring, J Theuws Show less
Non-small cell lung cancer (NSCLC) is one of the most prevalent and lethal types of cancers worldwide and its high incidence and mortality rates pose a significant public health challenge. Despite sig Show more
Non-small cell lung cancer (NSCLC) is one of the most prevalent and lethal types of cancers worldwide and its high incidence and mortality rates pose a significant public health challenge. Despite significant advances in targeted therapy and immunotherapy, the overall prognosis of patients with NSCLC remains poor. Hypoxia is a critical driving factor in tumor progression, influencing the biological behavior of tumor cells through complex molecular mechanisms. The present review systematically examined the role of the hypoxic microenvironment in NSCLC, demonstrating its crucial role in promoting tumor cell growth, invasion and metastasis. Additionally, it has been previously reported that the hypoxic microenvironment enhances tumor cell resistance by activating hypoxia-inducible factor and regulating exosome secretion. The hypoxic microenvironment also enables tumor cells to adapt to low oxygen and nutrient-deficient conditions by enhancing metabolic reprogramming, such as through upregulating glycolysis. Further studies have shown that the hypoxic microenvironment facilitates immune escape by modulating tumor-associated immune cells and suppressing the antitumor response of the immune system. Moreover, the hypoxic microenvironment increases tumor resistance to radiotherapy, chemotherapy and other types of targeted therapy through various pathways, significantly reducing the therapeutic efficacy of these treatments. Therefore, it could be suggested that early detection of cellular hypoxia and targeted therapy based on hypoxia may offer new therapeutic approaches for patients with NSCLC. The present review not only deepened the current understanding of the mechanisms of action and role of the hypoxic microenvironment in NSCLC but also provided a solid theoretical basis for the future development of precision treatments for patients with NSCLC. Show less
📄 PDF DOI: 10.3892/or.2024.8862
anticancer review
S.J. Rayhan, K.M. Koeller, J.C. Wong +221 more · 2020 · Heliyon · Elsevier · added 2026-04-20
S.J. Rayhan, K.M. Koeller, J.C. Wong, R.A. Butcher, S.L. Schreiber, F.G. Kuruvilla, A.F. Shamji, S.M. Sternson, P.J. Hergenrother, D.B. Kitchen, H. Decornez, J.R. Furr, J. Bajorath, Z. Mousavian, A. Masoudi-Nejad, R.S. Olayan, H. Ashoor, V.B. Bajic, Y. Yamanishi, M. Araki, A. Gutteridge, W. Honda, M. Kanehisa, S. Khakabimamaghani, K. Kavousi, F. Rayhan, S. Ahmed, S. Shatabda, D.M. Farid, A. Dehzangi, M.S. Rahman, K. Tian, M. Shao, Y. Wang, J. Guan, S. Zhou, K.C. Chan, Z.-H. You, W. Wang, S. Yang, J. Li, X. Chen, M.-X. Liu, G.-Y. Yan, K. Bleakley, S. Alaimo, A. Pulvirenti, R. Giugno, A. Ferro, F. Cheng, C. Liu, J. Jiang, W. Lu, W. Li, G. Liu, W. Zhou, J. Huang, Y. Tang, Z. He, J. Zhang, X.-H. Shi, L.-L. Hu, X. Kong, Y.-D. Cai, K.-C. Chou, X. Xiao, J.-L. Min, P. Wang, J. Keum, H. Nam Self-blm, M. Hao, S.H. Bryant, M. Gönen, W. Ba-Alawi, O. Soufan, M. Essack, P. Kalnis, H. Chen, Z. Zhang, Y.-A. Huang, S. Daminelli, J.M. Thomas, C. Durán, C.V. Cannistraci, V.J. Haupt, M. Schroeder, Q. Yuan, J. Gao, D. Wu, S. Zhang, H. Mamitsuka, S. Zhu, L. Wang, S.-X. Xia, F. Liu, X. Yan, Y. Zhou, K.-J. Song, A. Ezzat, M. Wu, X.-L. Li, C.-K. Kwoh, C.C. Yan, X. Zhang, F. Dai, J. Yin, Y. Zhang, M. Wen, S. Niu, H. Sha, R. Yang, Y. Yun, H. Lu, Y. López, S.P. Lal, G. Taherzadeh, J. Michaelson, A. Sattar, T. Tsunoda, A. Sharma, A.W.-C. Liew, Y. Yang, Y. Freund, R.E. Schapire, I. Goodfellow, Y. Bengio, A. Courville, Y. Du, J. Wang, X. Wang, J. Chen, H. Chang, C. Szegedy, W. Liu, Y. Jia, P. Sermanet, S. Reed, D. Anguelov, D. Erhan, V. Vanhoucke, A. Rabinovich, S. Ioffe, J. Shlens, Z. Wojna, A.A. Alemi, M. Abadi, P. Barham, Z. Chen, A. Davis, J. Dean, M. Devin, S. Ghemawat, G. Irving, M. Isard, A. Mahbub, M. Jani, D.P. Kingma, J. Ba Adam, M. Lin, Q. Chen, S. Yan, D.S. Wishart, C. Knox, A.C. Guo, D. Cheng, S. Shrivastava, D. Tzur, B. Gautam, M. Hassanali, S. Goto, M. Hattori, M. Hirakawa, M. Itoh, T. Katayama, S. Kawashima, S. Okuda, T. Tokimatsu, I. Schomburg, A. Chang, C. Ebeling, M. Gremse, C. Heldt, G. Huhn, D. Schomburg, S. Günther, M. Kuhn, M. Dunkel, M. Campillos, C. Senger, E. Petsalaki, J. Ahmed, E.G. Urdiales, A. Gewiess, L.J. Jensen, D.-S. Cao, S. Liu, Q.-S. Xu, H.-M. Lu, J.-H. Huang, Q.-N. Hu, Y.-Z. Liang, J.H. Friedman, F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion, O. Grisel, M. Blondel, P. Prettenhofer, R. Weiss, V. Dubourg, S.R. Safavian, D. Landgrebe, T. Joachims, C.M. Rahman, M. Kotera, P. Mutowo, A.P. Bento, N. Dedman, A. Gaulton, A. Hersey, J. Lomax, J.P. Overington Show less
The task of drug-target interaction prediction holds significant importance in pharmacology and therapeutic drug design. In this paper, we present FRnet-DTI, an auto-encoder based feature manipulation Show more
The task of drug-target interaction prediction holds significant importance in pharmacology and therapeutic drug design. In this paper, we present FRnet-DTI, an auto-encoder based feature manipulation and a convolutional neural network based classifier for drug target interaction prediction. Two convolutional neural networks are proposed: FRnet-Encode and FRnet-Predict. Here, one model is used for feature manipulation and the other one for classification. Using the first method FRnet-Encode, we generate 4096 features for each of the instances in each of the datasets and use the second method, FRnet-Predict, to identify interaction probability employing those features. We have tested our method on four gold standard datasets extensively used by other researchers. Experimental results shows that our method significantly improves over the state-of-the-art method on three out of four drug-target interaction gold standard datasets on both area under curve for Receiver Operating Characteristic (auROC) and area under Precision Recall curve (auPR) metric. We also introduce twenty new potential drug-target pairs for interaction based on high prediction scores. The source codes and implementation details of our methods are available from https://github.com/farshidrayhanuiu/FRnet-DTI/ and also readily available to use as an web application from http://farshidrayhan.pythonanywhere.com/FRnet-DTI/ . Show less
📄 PDF DOI: 10.1016/j.heliyon.2020.e03444
Au ML