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Long-Term Survival in Cancer Patients – Defining Novel Value Metrics and Methodologies in an Era of Immuno-Oncology Medicines 12 November 2014 Amsterdam, The Netherlands Welcome and Introduction Professor Bengt Jönsson Stockholm School of Economics Stockholm, Sweden 2 Immuno-Oncology (I-O) Therapies – New Questions in Need of Answers “How do we make informed decisions for patients in need when long-term outcomes with I-O therapies remain uncertain?” 3 “If a significant proportion of patients are expected to live longer with cancer and/or after cancer, what does this mean for health technology assessments (HTA)?” The Aspirational Goal for I-O Therapies – Reaching a New Normal % Survival Theoretical Survival with Various Cancer Treatments1,2 As cancer therapies evolve, the cancer survival curve continues to change 50 Clinicians: Benefit:Risk HTAs: Effectiveness and Value Patients: Hope Time 4 1. Chen TT. J Immunother Cancer. 2013;1:18. 2. Ribas A, et al. Clin Cancer Res. 2012;18:336-41. Agenda 5 Introduction Prof Bengt Jönsson 07:30 Immuno-Oncology Therapies: What, Why and How? Dr David Chao 07:40 How Do We Fully Assess Value in I-O? Prof Isabelle Durand-Zaleski 07:50 Long-Term Survival: The Need for Patient-Focused Metrics Cilia Linssen 08:00 Q&A and Panel Discussion 08:10 Thank You and Close 08:30 Immuno-Oncology Therapies: What, Why and How? Dr David Chao Royal Free Hospital London, UK 6 Dr Chao has done consultancy work and/or been sponsored by AstraZeneca, BMS, GSK, MSD, Novartis and Roche. What Is Immuno-Oncology • Our understanding of how cancers evade the immune system continues to evolve1–3 • Cancer cells can evade the immune system by shielding tumours from an immune response5–8 • I-O offers an innovative approach to fighting cancer, which involves harnessing the body’s immune system to fight the disease4, 5-10 7 1. Hanahan D, et al. Cell. 2011;144:646-674. 2. Gajewski TF, et al. Nat Immunol. 2013;14:1014-1022. 3. Poschke I, et al. Cancer Immunol Immunother. 2011;60:11611171. 4. Eggermont A, et al. Ann Oncol. 2012;23:viii5. 5. Pardoll DM. Nat Rev Cancer. 2012;12:252-264. 6. Shields JD, et al. Science. 2010;328:749-752. 7. Drake CG, et al. Adv Immunol. 2006;90:51-81. 8. Baruah P, et al. Immunobiology. 2012;217:669-675. 9. NCI. NCI Dictionary of Cancer Terms Website. 10. Fox BA, et al. J Transl Med. 2011;9:214. What Can We Expect From I-O in the Next Few Years? Any setting with evidence of tumour-mediated inhibition of the immune system is a potential candidate for immuno-oncology therapy A. Infiltrating immune cells reported B. Evidence of tumourassociated immunosuppres sion C. Tumour-immune system interactions correlate with clinical prognosis 8 I-O Agents Across Tumour Types1,2 Oesophageal (A,B,C) 1. Ascierto PA, et al. J Translational Med. 2014;12:141-153. 2. BMS. Immuno-Oncology Website. Leukaemia/ What Can We Expect from I-O in the Next Few Years? Phase I Phase II Phase III Ipilimumab (multiple solid and haematological cancers) (melanoma, prostate, lung, GBM) Tremelimumab (HCC, melanoma, mesothelioma) Tremelimumab (melanoma) Ipilimumab Post-approval Ipilimumab (melanoma) Pidilizumab (pancreatic, prostate, melanoma, lymphoma) Nivolumab (multiple solid and haematological cancers) Nivolumab (melanoma, RCC, NSCLC) Nivolumab (Japan) (melanoma) Pembrolizumab (brain, melanoma, NSCLC, renal, breast) Pembrolizumab (melanoma, NSCLC) Pembrolizumab (USA) (melanoma) INCB 24360 (breast, melanoma, NSCLC, myelodysplatic syndromes, ovarian) MPDL3280A (kidney, renal, bladder, AMP-224 (Advanced cancer)lymphoma, melanoma, NSCLC) INCB 24360 BMS-936559 (breast, melanoma, NSCLC, myelodysplatic syndromes, ovarian) (Melanoma, NHL, solid Indoximod tumours) (Breast, prostate, glioma, melanoma, pancreatic, lung, pancreatic) MGA 271 (Refractory cancers)IMP321 (Melanoma, breast, RCC, pancreatic) 9 1. NIH. ClinicalTrials.gov MPDL3280A (NSCLC) HCC, hepatocellular carcinoma; NSCLC, non-small cell lung cancer; RCC, renal cell carcinoma; GBM, glioblastoma multiforme; What Do Outcomes Show? Primary Analysis of Pooled OS Data (N=1861 Patients) 1.0 0.9 Median OS, months (95% CI): 11.4 (10.7–12.1) Proportion Alive 0.8 0.7 0.6 3-year OS rate, % (95% CI): 22 (20–24) 0.5 0.4 0.3 0.2 0.1 Ipilimumab CENSORED 0.0 0 12 24 36 48 60 72 84 96 108 120 120 26 15 5 0 Months Patients at Risk Ipilimumab 1861 10 839 370 254 192 170 1. Schadendorf D, et al. Pooled analysis of long-term survival data from phase II and phase III trials of ipilimumab in metastatic or locally advanced, unresectable melanoma. Presented at: European Cancer Congress 2013 (ECCO-ESMO-ESTRO); 27- Sep–1 Oct, 2013; Amsterdam, The Netherlands. Abstract 24. What Do Falling Mortality Trends Mean for I-O Therapies? Cancer mortality trends in the EU from 1970-1974 to 2005-2009 and predicted rates for 20141 Deaths per 100 000 Population All Cancer EU • • 11 EU Male EU Female Men Lung Breast Lung Colorectum Women Colorectum Pancreas Uterus Prostate Pancreas Stomach Leukaemias Stomach Leukaemias Reduced overall mortality rates and subsequent prolonged survival of cancer patients may require a chronic disease approach when assessing novel therapies Current metrics need to be reevaluated in the context of I-O therapies and how they may be applied 1. Malvezzi M, et al. Ann Onc. 2014;25:1650-1656. Why Do We Need to Think Differently About I-O? Use of chemotherapy principles and conventional endpoints do not fully capture the benefits of I-O drugs1-3 I-O drug activity is not standardised1,4 Need for new approach and integrated knowledge sharing to fully demonstrate value of I-O therapies I-O drugs use new mechanisms to control tumour growth. We need new tools (to complement our old tools) for assessing their value2 12 1. Hoos, et al. OncoImmunology. 2012;1:334-339. 2. Hoos A, et al. J Immunother.2007;30:1-15. 3. Hoos A, et al. JNCI.2010;102:1388-1397. 4. Wolchok JD, et al. Clin Cancer Res. 2009;15:7412-7420. 63-Year Old Gentleman…. • • • 13 Malignant melanoma of right leg 1987 Local relapses in September 2010 and 2011 Increasing shortness of breath summer 2012 63-Year Old Gentleman…. • • • • 14 Formal pleurodesis and biopsy confirmed relapse BRAF mutation positive Randomised on COMBI-V trial to combination arm Commenced 16 February 2013 Response to Dabrafenib and Trametinib at 9 Days 15 Response to Dabrafenib and Trametinib at 2 Months 16 Progression at 7 Months • • • Came off study September 2013 Remained well Started on trial with new I-O agent (PD-1 inhibitor), October 2013 After 3 Months on I-O Agent… • • 18 Ongoing response Interruption due to autoimmune toxicities In Summary… • • • • 19 Focus immune response onto the cancer Define patients with best benefit risk profile for different therapies Optimise treatment, e.g. how long is long enough? Continue to improve education and outcomes of managing autoimmune side effects What Is Old Is New Again? “Stimulate the Phagocytes!” The Doctor’s Dilemma by George Bernard Shaw 20 November 1906 20 How Do We Fully Assess Value in Immuno-Oncology? Professor Isabelle Durand-Zaleski URC Eco, Ile de France Paris, France 21 Professor Durand-Zaleski has been a speaker and adviser for Abbvie, BMS, Janssen, Medtronic, Pfizer and Sanofi. The Need to Reassess Oncology Metrics for I-O Therapies • • As the field of immuno-oncology evolves, we need to reassess the value of new I-O drugs from a unique I-O perspective, not exclusively from an oncology viewpoint1,2 Traditional study designs and value metrics:1,3 • • • • • • 22 Overlook the diversity of cancer patient populations Fail to differentiate from the unique characteristics of I-O therapies Do not address the heterogeneity of response to different cancer treatments Are designed to assess short-term, incremental, clinical benefits Could underestimate treatment benefits due to the presence of delayed clinical effects and durable survival associated with I-O therapy Insufficiently capture the quality of life impact in patients with durable survival 1. Chen TT. J Immunother Cancer. 2013;1:18. 2. Ribas A, et al. Clin Cancer Res. 2012;18:336-41. 3. Fox BA, et al. J Transl Med. 2011;9:214. How Is Value Best Demonstrated in I-O? Traditional metrics are effective, but insufficient for understanding the full value of I-O drugs • • • • • Overall survival (OS), median or mean 5-yr survival Disease-free survival (DFS) Progression free survival (PFS) Objective response rate (ORR) Clinical benefit (ORR + Stable Disease [SD]) Response duration Biomarkers • • • 23 • Survival Safety • Value • Response Resource Impact • • Safety profile (Adverse events [AE], Grade 3/4 AEs, discontinuation) Quality of life (QoL) Incremental cost effectiveness ratio (ICER) Budget impact Efficiency frontier 1. EMA. Guidance on the evaluation of anticancer medicinal products in man. 2011. 2. FDA. Guidance for industry clinical trial endpoints for the approval of cancer drugs and biologics. 2007. 3. Kogan AJ, et al. Biotechnology Healthcare. 2008;5:22-35. 4. Imai H, et al. Breast Cancer. 2007;14:81-87. 5. Kumar R. Med J Armed Forces India. 2013;69:273-277. 6. Geynisman DM. Hum Vaccin Immunother. 2014;7. [Epub ahead of print] 7. Burudpakdee C, et al. ESMO 2012. Poster 337P. Definition of Ultimate Goal with Traditional Metrics Varies by Cancer Type Type Aspects Terminology Varying Molecular Not specific to one cancer type Statistical Statistical 24 BMS. Data on file. Definitions ‘Cure’ Diverse range of definitions Persistent complete remission Long-term absence of cancerous cells (e.g., detectable by RT-PCR) Cure models Models show the proportion of ‘cured’ patients, e.g., plateau in survival curve at particular probability corresponding to the fraction cured Statistical cure Absence of excess mortality in cancer patients Definition of Ultimate Goal with Traditional Metrics Varies by Cancer Type (cont’d) Type Aspects Terminology Clinical cure Clinical Breast cancer Following treatment, the patient eventually dies from other causes The primary tumour volume at which the patient would Treatment cure never die from his/her specific disease, if detected and threshold treated Molecular Definite cure Complete pharmacological eradication of LSCs Clinical Functional cure Long-term absence of relapse Malignant melanoma Molecular Myeloma Clinical 25 No recurrence of cancer during a patient's lifetime Personal cure Surgical Chronic myeloid leukaemia Definitions BMS. Data on file. Minimal residual Low level of Langerhans cells that is still detectable (by RT-PCR) following treatment disease Operational cure Prolonged disease control with intensive therapy LSC, leukaemic stem cells Return to Normality – Is It All About Survival? • Five-year survival rate = the percentage of people alive five years after their diagnosis or the start of treatment1 • • • Stakeholders are questioning the value of available clinical endpoints for reflecting “cure” • • 26 Many cancers are considered ‘cured’ when the patient is alive and no remission occurs five years after diagnosis Recurrence after five years remains a possibility 14% of assessed journal articles reject the idea that OS and/or relapse-free (RFS) definitively measure ‘cure’ • ‘Reversion to general ‘While 5-year survival is a useful indicator, it does not provide direct information on the main aim of cancer treatment, the cure of the patient’ –Francisci (2009)2 • ‘Five-year and ten-year relapse-free survival is not equivalent to cure’ –Hortobagyi (2003)3 mortality rates implies that any patient surviving beyond five years of second-line systemic treatment is effectively completely cured of their metastatic disease. No evidence has been submitted to support such a strong claim’ –NICE (2012)4 1. NCI. NCI Dictionary of Cancer Terms Website. 2. Francisci S, et al. Eur J Cancer. 2009;45: 1067-1079. 3. Hortobagyi GN. Eur J Cancer Suppl. 2003;1: 24-34. 4. NICE. Final appraisal determination – Ipilimumab for previously treated advanced (unresectable or metastatic) melanoma. 2012. Potential Value Metrics for Assessing I-O Therapies AUC and restricted mean Potential highest value Survival rates by year Increasing value with increasing survival times 27 QoL These metrics are not designed to replace existing metrics. Rather, they: • Account for long-term survival • Demonstrate added value • Provide more information on safety and QoL • Revisit currently available metrics from a different perspective Potential New Value Metrics – Area Under the Curve (AUC) and Restricted Mean Treatment group Restricted mean estimate of survival difference Control group Median survival difference Survival difference at maximum follow up Survival Probability Restricted mean survival difference Final observation point at 5 years (control and treatment) 28 Estimated further survival difference Survival after 5 years is ignored by traditional metrics 50% of patients alive (control and treatment) 1. Davies A, et al. Health Outcomes Res Med. 2012;3:e25-e36. Expected values How Can We Measure What Matters to Stakeholders? Survival QoL Simplified care pathways Required values Patient identification Successful treatment Care continuity Keeping patients at home Use of innovative therapy Access to expertise Efficient use of specialty resources Well-defined role In care pathway No out of pocket cost Patients Carers Oncologists Primary Care Increased Involvement in patient care Equal access Appropriate treatment Medical 29 Help with compliance Social Economic 1. Adapted from Jean et al, 2012 Rapport Efficience de la télémédecine état des lieux de la littérature internationale et cadre d’évaluation. Conclusion • • • • • • 30 I-O therapies have the potential to transform cancer therapy and could become the standard of care for many patients1,2 Efficacy and safety profiles for I-O therapies differ from previously characterised chemotherapy and pathway-specific agents3 Current outcome measures as indicators of value do not fully assess new I-O therapies4-6 Novel approaches (eg, AUC and restricted mean) that repurpose available tools need to be explored7,8 May be particularly useful to assess outcomes and long-term survival in terms of quality of life, durability and sustainability of treatment outcomes, clinical and societal benefits The evolving healthcare environment provides an opportunity to assess by stakeholder how to improve access to innovative cancer treatments8,9 1. Wolchok J. Ann Oncol. 2012;23 (Suppl 8):viii15-viii21. 2. Hoos A, et al. JNCI. 2010;102:1388-1397. 3. Chen TT. J Immunother Cancer. 2013;1:18. 4. Hoos A, et al. Oncoimmunology. 2012;1:334-339. 5. Kudrin A. Hum Vaccin Immunother. 2012;8:1326-1334. 6. Ribas A, et al. Clin Cancer Res. 2012;18:336-341. 7. Ascierto PA, et al. J Transl Med. 2014;12:141. 8. Wolchok JD et al. Clin Cancer Res. 2009;15:7412-7420. 9. Van Cutsem E, et al. Eur J Cancer. 2013;49:2476-2485. Long-Term Survival: The Need for Patient-Focused Metrics Cilia Linssen Lung Cancer Information Centre and Lung Cancer Europe 31 Unmet Need Exists in Lung Cancer Lung cancer is the most common cancer in the world and is the most common cause of death from cancer worldwide1 1.825 million Total cases per year worldwide 1.590 million Total number of deaths per year worldwide 1.893 million Number of people alive after 5 years 24.483 million Healthy years of life lost 32 1. WHO Cancer Fact Sheet (No. 597), updated February 2014. What Matters to Patients? Domains of Lung Cancer Survivor Needs1 Education/ Counselling SocioEconomic Support Counseling and Complementary Diet, exercise treatment for and alternative and weight How do we measure depression andwhat matters medicine control anxiety Financial patients? support Information 33 Supportive Care 1. Yun YH, et al. Ann Oncol. 2013;24:1552-159. to What Matters to Patients? Lung cancer patients’ unmet needs/wants* 1. 2. 3. 4. 5. 6. 7. 8. 9. 34 Lack of energy/tiredness Uncertainty about the future Work around the home Not being able to do the things they used to do Anxiety Worry that results of treatment are beyond their control Learning to feel in control of the situation Feelings of sadness Making the most of their time *In order of most frequently reported 1. Sanders SL, et al. Psycho-oncology. 2010;19:480-9. What Matters to Caregivers? Partners and cancer patient caregivers’ unmet needs/wants* 1. 2. 3. 4. 5. 5. 6. 7. 8. 9. 10. 35 Managing concerns about cancer coming back Reducing stress in the person with cancer’s life Understanding the experience of the person with cancer Accessible hospital parking Information about benefits and side effects of treatments Balancing needs of the person with cancer and yours Obtaining best medical care Addressing fears about person with cancer’s deterioration Adjusting to changes in the person with cancer’s body Addressing problems with sex life Accessing information – prognosis *In order of highest unmet need 1. Girgis A, et al. Psycho-oncology. 2013;22:1557-1564. The ‘Sure Bet’ vs the ‘Hopeful Gamble’ Patients were asked which therapy they preferred, assuming same out-of-pocket cost to the patient: ‘Sure Bet’ • Average survival = 24 months • 100% certainty of death at 24 months for ALL patients 36 1. Lakdawalla DN, et al. Health Affairs. 2012;31:676-682. ‘Hopeful Gamble’ • Average survival = 24 months • 50% of all patients live 10 months or less • 30% of patients live more than 10 months but less 4.5 years • 20% of patients live more than 4.5 years What Is the Value of Hope? 77% Cancer patients prefer a ‘hopeful gamble’ to the ‘sure bet’ Patients may value treatments differently at different ages, in different family circumstances, or from other perspectives ‘sure bet’ 37 1. Lakdawalla DN, et al. Health Affairs. 2012;31:676-682. ‘hopeful gamble’ Align Values with Patients’ Views and Beliefs Patients Physicians 38 Payers Concluding Remarks 39 Q&A and Panel Discussion 40 Thank You 41