TheraRadar
Page updated Jul 7, 2026 · using data updated on Jun 28, 2026

Antibody-drug conjugates (ADCs) — Platform Heatmap

Antibody-drug conjugates spanning multiple tumor antigens. The dominant emerging modality across solid tumors.

52 drugs
33 indications
366 trials
27 in Phase 3
27 sponsors
Targets: Nectin-4 ADC · DLL3 ADC · HER2 · Claudin 18.2 · Trop-2 · EGFR / HER3
Beta 40 drugs of 52 20 indications of 33 171 programs mapped curated roster · no per-cell AI classification 7 ⚖ PDUFA-dated ⏰ 16 due ≤6 mo click any cell → asset tearsheet
At a glance

40 drugs target this family across 20 indications (171 drug–indication programs mapped). The most contested indication is Breast (73 programs).

Key findings
  • Class maturity: 8 of 52 drugs map to an approved compound (15%); 44 are NME candidates — mix of label-extension and first-mover bets.
  • Antigen concentration: Nectin-4 ADC (4 drugs, 8%) — leading among 34 antigens.
  • Indication concentration: Solid (basket) (25 drugs, 48%) — primary deployment target.
  • 26 platform drugs deployed in ≥3 indications (top: BL-B01D1 in 21 indications) — broad-applicability bets.
  • Sponsor concentration: AstraZeneca runs 7 drugs (13%) — leading among 27 sponsors.
  • 22 drugs have hot readouts in next 6 months — class-defining data imminent.
  • 22 drugs have stale trials (overdue without status change) — possible operational issues or class deprioritization.
  • 27 of 52 drugs have reached Ph3 (52%) — class maturity by progression.

Forward catalysts next 18 months⏰ 16 due ≤6 mo⚖ 7 PDUFA-dated

Nearest first. ⚖ Confirmed FDA PDUFA dates (curated calendar, primary sources) and 📅 estimated readouts (ClinicalTrials.gov primaryCompletionDate — a timing proxy, not a confirmed action date). Red = due within 6 months.

Drug × Indication

Each cell = this drug’s most-advanced program in that indication (“all assets against target X”). Click for details. · showing top 40 of 52 drugs × top 20 of 33 indications by program count — long tail omitted for width, not a data cap.
Ph1 Ph2 Ph3 Ph4 +combo
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Breast
NSCLC
Solid (basket)
Multi-tumor basket
Bladder
SCLC
Gastric/GEJ
Ovarian
Esophageal
CRC
Endometrial
Prostate
Cervical
PDAC
Biliary
Head & Neck
Nasopharyngeal
Pancreatic
Sarcoma
Gynecologic (basket)
BL-B01D1Sichuan BailiEGFR / HER3
Sacituzumab tirumotecanMerck & Co.TROP-2 ADC (next-gen)
trastuzumab deruxtecanAstraZenecaHER2
datopotamab deruxtecanAstraZenecaTrop-2
disitamab vedotinRemeGenHER2 ADC
HLX43Shanghai HenliusPD-L1
sacituzumab govitecanGilead SciencesTrop-2
HS-20093Hansoh BioMedical R&D Compa…DLL3 ADC
ifinatamab deruxtecanMerck & Co.B7-H3
telisotuzumab adizutecan (ABB…AbbViec-MET
patritumab deruxtecanMerck & Co.HER3
TQB2102Chia Tai Tianqing Pharmaceu…DLL3 ADC
9MW2821Mabwell (Shanghai) Bioscien…Nectin-4 ADC
trastuzumab emtansine (Kadcyl…Roche / GenentechHER2
enfortumab vedotinAstellas Pharma Global Deve…Nectin-4
mirvetuximab soravtansineAbbVieFRα
Rina-SGenmabFRα ADC
IBI-343Innovent Biologics (Suzhou)Claudin 18.2
SKB571Sichuan Kelun-Biotech Bioph…Investigational (Kelun-Bi…
SHR-A2009Suzhou Suncadia Biopharmace…HER3 ADC (topoisomerase I…
telisotuzumab vedotin (ABBV-3…AbbViec-MET
izalontamab brengitecanBristol-Myers SquibbEGFR / HER3
ZL-1310Zai Lab (Shanghai)DLL3 ADC
Sigvotatug VedotinPfizerIntegrin β6 ADC
zelenectide pevedotin (BT8009)BicycleTx LimitedNectin-4
BL-M17D1Sichuan BailiHER2
DP303cCSPC ZhongQi Pharmaceutical…HER2 ADC
BL-M05D1Sichuan BailiClaudin 18.2
HS-20117Hansoh BioMedical R&D Compa…DLL3 ADC
AZD4360AstraZenecaClaudin 18.2
BL-M02D1Sichuan BailiTROP2 ADC
Puxitatug SamrotecanAstraZenecaB7-H4 ADC
nuzefatide pevedotin (BT5528)BicycleTx LimitedEphA2
HS-10504Jiangsu HansohHER3 ADC (topoisomerase I…
DM005Doma Biopharmaceutical(Suzh…EGFR × c-MET (ADC)
MRG004ALepu BiopharmaTissue factor
AZD8205AstraZenecaB7-H4 ADC
BNT329BioNTechAnti-CA19-9 ADC
tisotumab vedotinPfizerTissue Factor ADC
LY4052031Eli LillyNectin-4 ADC

Beyond the grid Beta

What the matrix leaves out — rare mechanisms with only one player, small & emerging sponsors, and programs we haven’t classified yet.

White-space indications — a single asset 12 found

Indications where only ONE asset in this family competes — uncrowded ground for a new entrant.
⚡ first-in-class · 🌱 first-in-indication · 🆕 NME candidate · ✅ AI-classified + verified · ⚙️ AI-classified, unverified · first-in-class computed across 1 mapped landscape
More assets in this family (10) — same mechanism, beyond the matrix top 40 by activity
PhaseMechanismCompanyModalityReadoutTrial
Ph1 ABBV-319 — CD19 ADC (GRM payload) AbbVie IV 1Q29 NCT06977724
Ph1 LY4101174 — Nectin-4 ADC Eli Lilly 1Q27 NCT06238479
Ph1 ABBV-969 — PSMA × STEAP1 ADC AbbVie IV 2Q27 NCT06318273
Ph1 bulumtatug fuvedotin — Nectin-4 ADC Mabwell (Shanghai) Biosci… 2Q27 NCT06908928
Ph1 LY4170156 — Anti-FRα (FOLR1) ADC Eli Lilly IV/SC 1Q27 NCT06400472
Ph1 AZD5335 — FRα-targeted ADC AstraZeneca 4Q27 NCT07402915
Ph1 PF-08046876 — Integrin β6 Pfizer 3Q28 NCT07090499
Ph1 ABBV-519 — CD19 ADC (GRM payload) AbbVie SC 1Q29 NCT07607964
Ph1 PF-08046050 — CEACAM5 Pfizer IV/SC 3Q29 NCT06131840
Ph1 PF-08046049 — CD228 ADC Pfizer ⏰ 2Q26 NCT05571839
Trials not yet mapped to an indication (3) — trials of in-grid assets whose condition isn’t an indication column yet — surfaced per trial so none are hidden
PhaseMechanismCompanyModalityReadoutTrial
Ph2 Rina-S — FRα ADCunclassified Genmab 3Q28 NCT07539311
Ph2 SKB571 — Investigational (Kelun-Biotech ADC)unclassified Sichuan Kelun-Biotech Bio… 3Q27 NCT07564466
Ph1+Ph2 patritumab deruxtecan — HER3unclassified Merck & Co. 4Q28 NCT06596694

Frequently asked

Common questions about the Antibody-drug conjugates (ADCs) landscape

What drugs are in the Antibody-drug conjugates (ADCs) class?
52 assets in the Antibody-drug conjugates (ADCs) class are tracked in this platform view, including BL-B01D1, Sacituzumab tirumotecan, and trastuzumab deruxtecan. The heatmap maps every drug against the indications it is being developed for.
What conditions are Antibody-drug conjugates (ADCs) being developed for?
Antibody-drug conjugates (ADCs) are in clinical development across 33 indications, including Breast, NSCLC, Solid (basket), Bladder, and SCLC.
How many Antibody-drug conjugates (ADCs) are in late-stage trials?
Of the 52 tracked assets in the Antibody-drug conjugates (ADCs) class, 27 are in Phase 3, developed by 27 sponsors, across 366 mapped trials.
What are the upcoming Antibody-drug conjugates (ADCs) catalysts?
Near-term catalysts in this class include BL-B01D1 (data readout, Jul '26); Sacituzumab tirumoteca (data readout, Jul '26); HLX43 (data readout, Jul '26). Dates combine estimated trial readouts and confirmed FDA decision dates.
How is the Antibody-drug conjugates (ADCs) platform compiled?
Assets are compiled from a curated Antibody-drug conjugates (ADCs) target roster and matched to their ClinicalTrials.gov trials (2008–present). Each cell links to the underlying trial records.
Is the Antibody-drug conjugates (ADCs) heatmap free to use?
Yes — viewing and searching the Antibody-drug conjugates (ADCs) heatmap is free. A TheraRadar Pro subscription adds advanced filters, row/column selection, and one-click export to PowerPoint, PDF, and CSV.
How this is built — methodology & limits

These grids are only as good as the data and the classification behind them — so here is exactly what goes in, what stays out, how every assignment is made, and where the limits are.

Where the data comes from

Every heatmap is built from the public ClinicalTrials.gov registry, via its official API — interventional drug and biologic trials with a start date of 2008 or later. The master index holds over 145,000 trials and is refreshed weekly (see the “updated” date on this page). A disease landscape draws only from the active, Phase 1–3, industry-sponsored slice of that index.

  • In scope: industry-sponsored trials in Phase 1, 2, or 3, with an active status (recruiting, active-not-recruiting, not-yet-recruiting, or enrolling by invitation). Phase 4 sits in the index but is left out of the landscapes.
  • Filtered out: deeply stale programs (a primary completion date more than two years past with no update to completed or terminated); basket trials and incidental mentions (a trial counts toward a disease only when that disease is genuinely the subject of study — not a secondary cohort, an organ-of-origin overlap, or a passing mention); and healthy-volunteer studies.

We do not exclude trials by sponsor geography. Where a sponsor is based in China, the program is flagged on the page rather than hidden, so you can weigh it yourself. An automated test fails the weekly refresh if the underlying index is more than 14 days old, so a published grid is never built on a stale index.

How a trial is matched to a disease

Matching uses a structured medical ontology, not keyword guessing, and is designed so that no trial is ever silently dropped — every trial that clears the filters gets a classification, even if that is just “Other.” It runs as an ordered sequence of steps, stopping at the first that applies:

  1. Healthy-volunteer studies are set aside as non-disease trials.
  2. Ontology match — each tracked disease is linked to its official identifiers in the standard medical taxonomy (MeSH), so a trial can be matched even when its text uses a synonym.
  3. Curated disease patterns — a hand-maintained library of over 150 disease-name patterns covers the more granular indications across oncology, hematology, infectious disease, cardiometabolic, immunology, and neuropsychiatry.
  4. Basket guard — a trial matching four or more distinct diseases, or carrying explicit basket language (“tumor-agnostic,” “all solid tumors,” “pan-cancer”), is grouped into a single advanced-solid-tumor category rather than over-counted across every cancer it touches.
  5. Therapeutic-area roll-up — a trial with no specific match, but which the taxonomy still places under a broad area, is assigned to that area (“Oncology — other,” “Immunology — other,” …), checking cancers first so a site-specific tumor isn’t filed under its anatomical system.

A “drop-if-parent-present” rule keeps a generic name from drowning out a subtype: a trial matching both lupus and lupus nephritis is reported only as lupus nephritis. Internal abbreviations are translated to the plain disease names used across the site (for example, “CRC” becomes “Colorectal Cancer”), and the same classifier is shared by every heatmap, so the same trial always maps to the same disease wherever it appears.

How a drug is matched to its mechanism

Mechanism of action is the hardest part to get right, so it is assigned in layers — leaning on curated and public data first, with AI as a last resort:

  1. Curated rulebook (first). A rulebook we maintain — over 600 drug-to-mechanism rules — is checked first, matching on drug names, trial acronyms, sponsor trial identifiers, and intervention lists. First match wins, which stops a combination trial from being counted several times.
  2. Public molecular-target data. Where no rule applies, each intervention’s target is looked up in a public target database, with verbose or gene-symbol labels normalized into consistent short forms so one target isn’t split across several columns.
  3. Standard-of-care backbones. A small set of rules recognizes common combination scaffolds (checkpoint-inhibitor monotherapy, standard chemotherapy regimens, established standard-of-care agents) so they aren’t mistaken for the experimental arm.
  4. AI as a last resort, then cross-checked. Only for genuinely opaque sponsor code-names that none of the first three steps can resolve do we ask an AI model to propose a mechanism — applied only above a fixed confidence bar, then automatically cross-checked against the sponsor’s own pipeline page. Where AI and the sponsor agree, the program is marked sponsor-verified. Where they contradict, the label is discarded entirely — not shown, not counted.

New mechanism rules are independently double-verified before they’re trusted — a second, adversarial pass set up to disprove the first — and each is checked so it can’t mislabel an unrelated trial. Drugs whose mechanism isn’t publicly disclosed are shown openly as “Emerging — not yet disclosed” rather than guessed at: for a tool meant to support real decisions, “we don’t yet know” is a more trustworthy answer than a confident guess.

Where AI is used — and where it isn’t

The disease and mechanism matching above is driven first by deterministic rules and public ontologies, not AI. AI plays three bounded, disclosed roles: (1) an optional extra check that a trial genuinely studies the disease, on top of the ontology match; (2) inferring a trial’s treatment setting on the competitive grids when the rules don’t cover it, only above a fixed confidence bar; and (3) the last-resort mechanism step above, always cross-checked against the sponsor’s disclosures. Wherever an AI label reaches a cell, the page marks it (⚙️ or ✅) — AI is never the silent, sole source of what you see.

What the on-page markers mean

  • ✅ Sponsor-verified — AI proposed the mechanism and it matched the sponsor’s own pipeline page. High-trust.
  • ⚙️ AI-classified — AI proposed it above the confidence bar but it has not yet been cross-checked against the sponsor. Useful; verify before citing. It never means a person reviewed it.
  • ⚡ First-in-class — the mechanism hasn’t appeared in any other disease landscape we’ve built. This reflects the scope of landscapes published so far (the tooltip lists exactly which were scanned), not an absolute claim about the whole market.
  • 🌱 First-in-indication — the only program competing on that mechanism within this disease.
  • 🆕 NME candidate — the interventions match no drug in our approved-drug index, suggesting a new molecular entity. The index is incomplete — a signal, not a regulatory fact.
  • 🔗 Combination · 👶 Pediatric · 🔥 Hot (readout within six months) · ⏳ Stale (completion date passed but still marked active — often a stalled program).

Sponsor names are resolved through a curated parent/subsidiary map; unrecognized sponsors appear under their raw registry name. The registry records the sponsor at a trial’s inception, so names are as originally filed and may not reflect later acquisitions. To keep large grids legible, mechanisms with a single program are listed separately rather than crowding the main grid, and very small players are listed below it — presentation choices only; nothing is removed from the underlying counts.

How we score programs — “what’s about to move”

Each program carries a 0–100 score that deliberately ranks imminence over raw stage — the most decision-relevant signal on a competitive grid. It is the sum of:

  • Clinical phase — up to 40 points (Phase 3 = 40, Phase 2 = 25, Phase 1 = 10).
  • Readout proximity — up to 60 points (next readout <6 months = 60, 6–12 months = 45, 1–2 years = 30, distant = 5).
  • Stale penalty — the score is halved if a trial is past its expected readout but still listed as active.

Cell colour on the grid is driven by this score, so a Phase 2 program about to read out can — correctly — outrank a dormant Phase 3 one. It answers “what’s about to move,” not just “what’s furthest along.”

What each grid plots

  • Indication landscape — one disease — companies (rows) × mechanism of action (columns): who is competing, and on what mechanism.
  • Company portfolio — one company — diseases (rows) × mechanism (columns): where it is active, and what it is betting on.
  • MOA platform (this page) — one mechanism family — drugs (rows) × diseases (columns): who is working on this class, and where.
  • Competitive landscape — one disease — mechanism (rows) × clinical setting (columns), aggregated across companies; setting columns are tailored per disease (e.g. lines of therapy in oncology; biologic-naïve vs. biologic-experienced in IBD).

What we don’t claim

  • First-in-class is editorial, not absolute — “not seen in the landscapes we’ve built,” not “novel across the industry.”
  • NME candidate is a signal, not a filing — absent from our (incomplete) approved-drug index.
  • Disease matching is automated and not exhaustively validated per disease — ontology and pattern matching can occasionally include or miss a trial.
  • AI-classified mechanisms are machine-proposed — unconfirmed unless they also carry ✅.
  • Sponsor names are as-filed and may lag current ownership.
  • Grids are as fresh as their last rebuild from the weekly index — no faster continuous refresh is claimed.

Data: ClinicalTrials.gov v2 API + FDA Drugs@FDA (approved-drug index). Spot an error? [email protected].

Data: ClinicalTrials.gov · Curated target-family roster · Trials registered 2008 onwards.